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caffe.proto
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syntax = "proto2";
package caffe;
// Specifies the shape (dimensions) of a Blob.
message BlobShape {
repeated int64 dim = 1 [packed = true];
}
message BlobProto {
optional BlobShape shape = 7;
repeated float data = 5 [packed = true];
repeated float diff = 6 [packed = true];
repeated double double_data = 8 [packed = true];
repeated double double_diff = 9 [packed = true];
// 4D dimensions -- deprecated. Use "shape" instead.
optional int32 num = 1 [default = 0];
optional int32 channels = 2 [default = 0];
optional int32 height = 3 [default = 0];
optional int32 width = 4 [default = 0];
}
// The BlobProtoVector is simply a way to pass multiple blobproto instances
// around.
message BlobProtoVector {
repeated BlobProto blobs = 1;
}
message Datum {
optional int32 channels = 1;
optional int32 height = 2;
optional int32 width = 3;
// the actual image data, in bytes
optional bytes data = 4;
optional int32 label = 5;
// Optionally, the datum could also hold float data.
repeated float float_data = 6;
// If true data contains an encoded image that need to be decoded
optional bool encoded = 7 [default = false];
}
// The label (display) name and label id.
message LabelMapItem {
// Both name and label are required.
optional string name = 1;
optional int32 label = 2;
// display_name is optional.
optional string display_name = 3;
}
message LabelMap {
repeated LabelMapItem item = 1;
}
// Sample a bbox in the normalized space [0, 1] with provided constraints.
message Sampler {
// Minimum scale of the sampled bbox.
optional float min_scale = 1 [default = 1.];
// Maximum scale of the sampled bbox.
optional float max_scale = 2 [default = 1.];
// Minimum aspect ratio of the sampled bbox.
optional float min_aspect_ratio = 3 [default = 1.];
// Maximum aspect ratio of the sampled bbox.
optional float max_aspect_ratio = 4 [default = 1.];
}
// Constraints for selecting sampled bbox.
message SampleConstraint {
// Minimum Jaccard overlap between sampled bbox and all bboxes in
// AnnotationGroup.
optional float min_jaccard_overlap = 1;
// Maximum Jaccard overlap between sampled bbox and all bboxes in
// AnnotationGroup.
optional float max_jaccard_overlap = 2;
// Minimum coverage of sampled bbox by all bboxes in AnnotationGroup.
optional float min_sample_coverage = 3;
// Maximum coverage of sampled bbox by all bboxes in AnnotationGroup.
optional float max_sample_coverage = 4;
// Minimum coverage of all bboxes in AnnotationGroup by sampled bbox.
optional float min_object_coverage = 5;
// Maximum coverage of all bboxes in AnnotationGroup by sampled bbox.
optional float max_object_coverage = 6;
}
// Sample a batch of bboxes with provided constraints.
message BatchSampler {
// Use original image as the source for sampling.
optional bool use_original_image = 1 [default = true];
// Constraints for sampling bbox.
optional Sampler sampler = 2;
// Constraints for determining if a sampled bbox is positive or negative.
optional SampleConstraint sample_constraint = 3;
// If provided, break when found certain number of samples satisfing the
// sample_constraint.
optional uint32 max_sample = 4;
// Maximum number of trials for sampling to avoid infinite loop.
optional uint32 max_trials = 5 [default = 100];
}
// Condition for emitting annotations.
message EmitConstraint {
enum EmitType {
CENTER = 0;
MIN_OVERLAP = 1;
}
optional EmitType emit_type = 1 [default = CENTER];
// If emit_type is MIN_OVERLAP, provide the emit_overlap.
optional float emit_overlap = 2;
}
// The normalized bounding box [0, 1] w.r.t. the input image size.
message NormalizedBBox {
optional float xmin = 1;
optional float ymin = 2;
optional float xmax = 3;
optional float ymax = 4;
optional int32 label = 5;
optional bool difficult = 6;
optional float score = 7;
optional float size = 8;
}
// Annotation for each object instance.
message Annotation {
optional int32 instance_id = 1 [default = 0];
optional NormalizedBBox bbox = 2;
}
// Group of annotations for a particular label.
message AnnotationGroup {
optional int32 group_label = 1;
repeated Annotation annotation = 2;
}
// An extension of Datum which contains "rich" annotations.
message AnnotatedDatum {
enum AnnotationType {
BBOX = 0;
}
optional Datum datum = 1;
// If there are "rich" annotations, specify the type of annotation.
// Currently it only supports bounding box.
// If there are no "rich" annotations, use label in datum instead.
optional AnnotationType type = 2;
// Each group contains annotation for a particular class.
repeated AnnotationGroup annotation_group = 3;
}
message FillerParameter {
// The filler type.
optional string type = 1 [default = 'constant'];
optional float value = 2 [default = 0]; // the value in constant filler
optional float min = 3 [default = 0]; // the min value in uniform filler
optional float max = 4 [default = 1]; // the max value in uniform filler
optional float mean = 5 [default = 0]; // the mean value in Gaussian filler
optional float std = 6 [default = 1]; // the std value in Gaussian filler
// The expected number of non-zero output weights for a given input in
// Gaussian filler -- the default -1 means don't perform sparsification.
optional int32 sparse = 7 [default = -1];
// Normalize the filler variance by fan_in, fan_out, or their average.
// Applies to 'xavier' and 'msra' fillers.
enum VarianceNorm {
FAN_IN = 0;
FAN_OUT = 1;
AVERAGE = 2;
}
optional VarianceNorm variance_norm = 8 [default = FAN_IN];
}
message NetParameter {
optional string name = 1; // consider giving the network a name
// DEPRECATED. See InputParameter. The input blobs to the network.
repeated string input = 3;
// DEPRECATED. See InputParameter. The shape of the input blobs.
repeated BlobShape input_shape = 8;
// 4D input dimensions -- deprecated. Use "input_shape" instead.
// If specified, for each input blob there should be four
// values specifying the num, channels, height and width of the input blob.
// Thus, there should be a total of (4 * #input) numbers.
repeated int32 input_dim = 4;
// Whether the network will force every layer to carry out backward operation.
// If set False, then whether to carry out backward is determined
// automatically according to the net structure and learning rates.
optional bool force_backward = 5 [default = false];
// The current "state" of the network, including the phase, level, and stage.
// Some layers may be included/excluded depending on this state and the states
// specified in the layers' include and exclude fields.
optional NetState state = 6;
// Print debugging information about results while running Net::Forward,
// Net::Backward, and Net::Update.
optional bool debug_info = 7 [default = false];
// The layers that make up the net. Each of their configurations, including
// connectivity and behavior, is specified as a LayerParameter.
repeated LayerParameter layer = 100; // ID 100 so layers are printed last.
// DEPRECATED: use 'layer' instead.
repeated V1LayerParameter layers = 2;
}
// NOTE
// Update the next available ID when you add a new SolverParameter field.
//
// SolverParameter next available ID: 44 (last added: plateau_winsize)
message SolverParameter {
//////////////////////////////////////////////////////////////////////////////
// Specifying the train and test networks
//
// Exactly one train net must be specified using one of the following fields:
// train_net_param, train_net, net_param, net
// One or more test nets may be specified using any of the following fields:
// test_net_param, test_net, net_param, net
// If more than one test net field is specified (e.g., both net and
// test_net are specified), they will be evaluated in the field order given
// above: (1) test_net_param, (2) test_net, (3) net_param/net.
// A test_iter must be specified for each test_net.
// A test_level and/or a test_stage may also be specified for each test_net.
//////////////////////////////////////////////////////////////////////////////
// Proto filename for the train net, possibly combined with one or more
// test nets.
optional string net = 24;
// Inline train net param, possibly combined with one or more test nets.
optional NetParameter net_param = 25;
optional string train_net = 1; // Proto filename for the train net.
repeated string test_net = 2; // Proto filenames for the test nets.
optional NetParameter train_net_param = 21; // Inline train net params.
repeated NetParameter test_net_param = 22; // Inline test net params.
// The states for the train/test nets. Must be unspecified or
// specified once per net.
//
// By default, all states will have solver = true;
// train_state will have phase = TRAIN,
// and all test_state's will have phase = TEST.
// Other defaults are set according to the NetState defaults.
optional NetState train_state = 26;
repeated NetState test_state = 27;
// Evaluation type.
optional string eval_type = 41 [default = "classification"];
// ap_version: different ways of computing Average Precision.
// Check https://sanchom.wordpress.com/tag/average-precision/ for details.
// 11point: the 11-point interpolated average precision. Used in VOC2007.
// MaxIntegral: maximally interpolated AP. Used in VOC2012/ILSVRC.
// Integral: the natural integral of the precision-recall curve.
optional string ap_version = 42 [default = "Integral"];
// If true, display per class result.
optional bool show_per_class_result = 44 [default = false];
// The number of iterations for each test net.
repeated int32 test_iter = 3;
// The number of iterations between two testing phases.
optional int32 test_interval = 4 [default = 0];
optional bool test_compute_loss = 19 [default = false];
// If true, run an initial test pass before the first iteration,
// ensuring memory availability and printing the starting value of the loss.
optional bool test_initialization = 32 [default = true];
optional float base_lr = 5; // The base learning rate
// the number of iterations between displaying info. If display = 0, no info
// will be displayed.
optional int32 display = 6;
// Display the loss averaged over the last average_loss iterations
optional int32 average_loss = 33 [default = 1];
optional int32 max_iter = 7; // the maximum number of iterations
// accumulate gradients over `iter_size` x `batch_size` instances
optional int32 iter_size = 36 [default = 1];
// The learning rate decay policy. The currently implemented learning rate
// policies are as follows:
// - fixed: always return base_lr.
// - step: return base_lr * gamma ^ (floor(iter / step))
// - exp: return base_lr * gamma ^ iter
// - inv: return base_lr * (1 + gamma * iter) ^ (- power)
// - multistep: similar to step but it allows non uniform steps defined by
// stepvalue
// - poly: the effective learning rate follows a polynomial decay, to be
// zero by the max_iter. return base_lr (1 - iter/max_iter) ^ (power)
// - sigmoid: the effective learning rate follows a sigmod decay
// return base_lr ( 1/(1 + exp(-gamma * (iter - stepsize))))
// - plateau: decreases lr
// if the minimum loss isn't updated for 'plateau_winsize' iters
//
// where base_lr, max_iter, gamma, step, stepvalue and power are defined
// in the solver parameter protocol buffer, and iter is the current iteration.
optional string lr_policy = 8;
optional float gamma = 9; // The parameter to compute the learning rate.
optional float power = 10; // The parameter to compute the learning rate.
optional float momentum = 11; // The momentum value.
optional float weight_decay = 12; // The weight decay.
// regularization types supported: L1 and L2
// controlled by weight_decay
optional string regularization_type = 29 [default = "L2"];
// the stepsize for learning rate policy "step"
optional int32 stepsize = 13;
// the stepsize for learning rate policy "multistep"
repeated int32 stepvalue = 34;
// the stepsize for learning rate policy "plateau"
repeated int32 plateau_winsize = 43;
// Set clip_gradients to >= 0 to clip parameter gradients to that L2 norm,
// whenever their actual L2 norm is larger.
optional float clip_gradients = 35 [default = -1];
optional int32 snapshot = 14 [default = 0]; // The snapshot interval
optional string snapshot_prefix = 15; // The prefix for the snapshot.
// whether to snapshot diff in the results or not. Snapshotting diff will help
// debugging but the final protocol buffer size will be much larger.
optional bool snapshot_diff = 16 [default = false];
enum SnapshotFormat {
HDF5 = 0;
BINARYPROTO = 1;
}
optional SnapshotFormat snapshot_format = 37 [default = BINARYPROTO];
// the mode solver will use: 0 for CPU and 1 for GPU. Use GPU in default.
enum SolverMode {
CPU = 0;
GPU = 1;
}
optional SolverMode solver_mode = 17 [default = GPU];
// the device_id will that be used in GPU mode. Use device_id = 0 in default.
optional int32 device_id = 18 [default = 0];
// If non-negative, the seed with which the Solver will initialize the Caffe
// random number generator -- useful for reproducible results. Otherwise,
// (and by default) initialize using a seed derived from the system clock.
optional int64 random_seed = 20 [default = -1];
// type of the solver
optional string type = 40 [default = "SGD"];
// numerical stability for RMSProp, AdaGrad and AdaDelta and Adam
optional float delta = 31 [default = 1e-8];
// parameters for the Adam solver
optional float momentum2 = 39 [default = 0.999];
// RMSProp decay value
// MeanSquare(t) = rms_decay*MeanSquare(t-1) + (1-rms_decay)*SquareGradient(t)
optional float rms_decay = 38 [default = 0.99];
// If true, print information about the state of the net that may help with
// debugging learning problems.
optional bool debug_info = 23 [default = false];
// If false, don't save a snapshot after training finishes.
optional bool snapshot_after_train = 28 [default = true];
// DEPRECATED: old solver enum types, use string instead
enum SolverType {
SGD = 0;
NESTEROV = 1;
ADAGRAD = 2;
RMSPROP = 3;
ADADELTA = 4;
ADAM = 5;
}
// DEPRECATED: use type instead of solver_type
optional SolverType solver_type = 30 [default = SGD];
}
// A message that stores the solver snapshots
message SolverState {
optional int32 iter = 1; // The current iteration
optional string learned_net = 2; // The file that stores the learned net.
repeated BlobProto history = 3; // The history for sgd solvers
optional int32 current_step = 4 [default = 0]; // The current step for learning rate
optional float minimum_loss = 5 [default = 1E38]; // Historical minimum loss
optional int32 iter_last_event = 6 [default = 0]; // The iteration when last lr-update or min_loss-update happend
}
enum Phase {
TRAIN = 0;
TEST = 1;
}
message NetState {
optional Phase phase = 1 [default = TEST];
optional int32 level = 2 [default = 0];
repeated string stage = 3;
}
message NetStateRule {
// Set phase to require the NetState have a particular phase (TRAIN or TEST)
// to meet this rule.
optional Phase phase = 1;
// Set the minimum and/or maximum levels in which the layer should be used.
// Leave undefined to meet the rule regardless of level.
optional int32 min_level = 2;
optional int32 max_level = 3;
// Customizable sets of stages to include or exclude.
// The net must have ALL of the specified stages and NONE of the specified
// "not_stage"s to meet the rule.
// (Use multiple NetStateRules to specify conjunctions of stages.)
repeated string stage = 4;
repeated string not_stage = 5;
}
// Specifies training parameters (multipliers on global learning constants,
// and the name and other settings used for weight sharing).
message ParamSpec {
// The names of the parameter blobs -- useful for sharing parameters among
// layers, but never required otherwise. To share a parameter between two
// layers, give it a (non-empty) name.
optional string name = 1;
// Whether to require shared weights to have the same shape, or just the same
// count -- defaults to STRICT if unspecified.
optional DimCheckMode share_mode = 2;
enum DimCheckMode {
// STRICT (default) requires that num, channels, height, width each match.
STRICT = 0;
// PERMISSIVE requires only the count (num*channels*height*width) to match.
PERMISSIVE = 1;
}
// The multiplier on the global learning rate for this parameter.
optional float lr_mult = 3 [default = 1.0];
// The multiplier on the global weight decay for this parameter.
optional float decay_mult = 4 [default = 1.0];
}
// NOTE
// Update the next available ID when you add a new LayerParameter field.
//
// LayerParameter next available layer-specific ID: 148 (last added: focal_loss_param)
message LayerParameter {
optional string name = 1; // the layer name
optional string type = 2; // the layer type
repeated string bottom = 3; // the name of each bottom blob
repeated string top = 4; // the name of each top blob
// The train / test phase for computation.
optional Phase phase = 10;
// The amount of weight to assign each top blob in the objective.
// Each layer assigns a default value, usually of either 0 or 1,
// to each top blob.
repeated float loss_weight = 5;
// Specifies training parameters (multipliers on global learning constants,
// and the name and other settings used for weight sharing).
repeated ParamSpec param = 6;
// The blobs containing the numeric parameters of the layer.
repeated BlobProto blobs = 7;
// Specifies whether to backpropagate to each bottom. If unspecified,
// Caffe will automatically infer whether each input needs backpropagation
// to compute parameter gradients. If set to true for some inputs,
// backpropagation to those inputs is forced; if set false for some inputs,
// backpropagation to those inputs is skipped.
//
// The size must be either 0 or equal to the number of bottoms.
repeated bool propagate_down = 11;
// Rules controlling whether and when a layer is included in the network,
// based on the current NetState. You may specify a non-zero number of rules
// to include OR exclude, but not both. If no include or exclude rules are
// specified, the layer is always included. If the current NetState meets
// ANY (i.e., one or more) of the specified rules, the layer is
// included/excluded.
repeated NetStateRule include = 8;
repeated NetStateRule exclude = 9;
// Parameters for data pre-processing.
optional TransformationParameter transform_param = 100;
// Parameters shared by loss layers.
optional LossParameter loss_param = 101;
// Layer type-specific parameters.
//
// Note: certain layers may have more than one computational engine
// for their implementation. These layers include an Engine type and
// engine parameter for selecting the implementation.
// The default for the engine is set by the ENGINE switch at compile-time.
optional AccuracyParameter accuracy_param = 102;
optional AnnotatedDataParameter annotated_data_param = 200;
optional ArgMaxParameter argmax_param = 103;
optional BatchNormParameter batch_norm_param = 139;
optional BiasParameter bias_param = 141;
optional ConcatParameter concat_param = 104;
optional ContrastiveLossParameter contrastive_loss_param = 105;
optional ConvolutionParameter convolution_param = 106;
optional CropParameter crop_param = 144;
optional DataParameter data_param = 107;
optional DetectionEvaluateParameter detection_evaluate_param = 205;
optional DetectionOutputParameter detection_output_param = 204;
optional DropoutParameter dropout_param = 108;
optional DummyDataParameter dummy_data_param = 109;
optional EltwiseParameter eltwise_param = 110;
optional ELUParameter elu_param = 140;
optional EmbedParameter embed_param = 137;
optional ExpParameter exp_param = 111;
optional FlattenParameter flatten_param = 135;
optional HDF5DataParameter hdf5_data_param = 112;
optional HDF5OutputParameter hdf5_output_param = 113;
optional HingeLossParameter hinge_loss_param = 114;
optional ImageDataParameter image_data_param = 115;
optional InfogainLossParameter infogain_loss_param = 116;
optional InnerProductParameter inner_product_param = 117;
optional InputParameter input_param = 143;
optional LogParameter log_param = 134;
optional LRNParameter lrn_param = 118;
optional MemoryDataParameter memory_data_param = 119;
optional MultiBoxLossParameter multibox_loss_param = 201;
optional MVNParameter mvn_param = 120;
optional NormalizeParameter norm_param = 206;
optional ParameterParameter parameter_param = 145;
optional PermuteParameter permute_param = 202;
optional PoolingParameter pooling_param = 121;
optional PowerParameter power_param = 122;
optional PReLUParameter prelu_param = 131;
optional PriorBoxParameter prior_box_param = 203;
optional PythonParameter python_param = 130;
optional RecurrentParameter recurrent_param = 146;
optional ReductionParameter reduction_param = 136;
optional ReLUParameter relu_param = 123;
optional ReLU6Parameter relu6_param = 208;
optional ReshapeParameter reshape_param = 133;
optional ScaleParameter scale_param = 142;
optional SigmoidParameter sigmoid_param = 124;
optional SoftmaxParameter softmax_param = 125;
optional FocalLossParameter focal_loss_param = 147;
optional SPPParameter spp_param = 132;
optional SliceParameter slice_param = 126;
optional TanHParameter tanh_param = 127;
optional ThresholdParameter threshold_param = 128;
optional TileParameter tile_param = 138;
optional VideoDataParameter video_data_param = 207;
optional WindowDataParameter window_data_param = 129;
}
// Message that stores parameters used to apply transformation
// to the data layer's data
message TransformationParameter {
// For data pre-processing, we can do simple scaling and subtracting the
// data mean, if provided. Note that the mean subtraction is always carried
// out before scaling.
optional float scale = 1 [default = 1];
// Specify if we want to randomly mirror data.
optional bool mirror = 2 [default = false];
// Specify if we would like to randomly crop an image.
optional uint32 crop_size = 3 [default = 0];
optional uint32 crop_h = 11 [default = 0];
optional uint32 crop_w = 12 [default = 0];
// mean_file and mean_value cannot be specified at the same time
optional string mean_file = 4;
// if specified can be repeated once (would substract it from all the channels)
// or can be repeated the same number of times as channels
// (would subtract them from the corresponding channel)
repeated float mean_value = 5;
// Force the decoded image to have 3 color channels.
optional bool force_color = 6 [default = false];
// Force the decoded image to have 1 color channels.
optional bool force_gray = 7 [default = false];
// Resize policy
optional ResizeParameter resize_param = 8;
// Noise policy
optional NoiseParameter noise_param = 9;
// Distortion policy
optional DistortionParameter distort_param = 13;
// Expand policy
optional ExpansionParameter expand_param = 14;
// Constraint for emitting the annotation after transformation.
optional EmitConstraint emit_constraint = 10;
}
// Message that stores parameters used by data transformer for resize policy
message ResizeParameter {
//Probability of using this resize policy
optional float prob = 1 [default = 1];
enum Resize_mode {
WARP = 1;
FIT_SMALL_SIZE = 2;
FIT_LARGE_SIZE_AND_PAD = 3;
}
optional Resize_mode resize_mode = 2 [default = WARP];
optional uint32 height = 3 [default = 0];
optional uint32 width = 4 [default = 0];
// A parameter used to update bbox in FIT_SMALL_SIZE mode.
optional uint32 height_scale = 8 [default = 0];
optional uint32 width_scale = 9 [default = 0];
enum Pad_mode {
CONSTANT = 1;
MIRRORED = 2;
REPEAT_NEAREST = 3;
}
// Padding mode for BE_SMALL_SIZE_AND_PAD mode and object centering
optional Pad_mode pad_mode = 5 [default = CONSTANT];
// if specified can be repeated once (would fill all the channels)
// or can be repeated the same number of times as channels
// (would use it them to the corresponding channel)
repeated float pad_value = 6;
enum Interp_mode { //Same as in OpenCV
LINEAR = 1;
AREA = 2;
NEAREST = 3;
CUBIC = 4;
LANCZOS4 = 5;
}
//interpolation for for resizing
repeated Interp_mode interp_mode = 7;
}
message SaltPepperParameter {
//Percentage of pixels
optional float fraction = 1 [default = 0];
repeated float value = 2;
}
// Message that stores parameters used by data transformer for transformation
// policy
message NoiseParameter {
//Probability of using this resize policy
optional float prob = 1 [default = 0];
// Histogram equalized
optional bool hist_eq = 2 [default = false];
// Color inversion
optional bool inverse = 3 [default = false];
// Grayscale
optional bool decolorize = 4 [default = false];
// Gaussian blur
optional bool gauss_blur = 5 [default = false];
// JPEG compression quality (-1 = no compression)
optional float jpeg = 6 [default = -1];
// Posterization
optional bool posterize = 7 [default = false];
// Erosion
optional bool erode = 8 [default = false];
// Salt-and-pepper noise
optional bool saltpepper = 9 [default = false];
optional SaltPepperParameter saltpepper_param = 10;
// Local histogram equalization
optional bool clahe = 11 [default = false];
// Color space conversion
optional bool convert_to_hsv = 12 [default = false];
// Color space conversion
optional bool convert_to_lab = 13 [default = false];
}
// Message that stores parameters used by data transformer for distortion policy
message DistortionParameter {
// The probability of adjusting brightness.
optional float brightness_prob = 1 [default = 0.0];
// Amount to add to the pixel values within [-delta, delta].
// The possible value is within [0, 255]. Recommend 32.
optional float brightness_delta = 2 [default = 0.0];
// The probability of adjusting contrast.
optional float contrast_prob = 3 [default = 0.0];
// Lower bound for random contrast factor. Recommend 0.5.
optional float contrast_lower = 4 [default = 0.0];
// Upper bound for random contrast factor. Recommend 1.5.
optional float contrast_upper = 5 [default = 0.0];
// The probability of adjusting hue.
optional float hue_prob = 6 [default = 0.0];
// Amount to add to the hue channel within [-delta, delta].
// The possible value is within [0, 180]. Recommend 36.
optional float hue_delta = 7 [default = 0.0];
// The probability of adjusting saturation.
optional float saturation_prob = 8 [default = 0.0];
// Lower bound for the random saturation factor. Recommend 0.5.
optional float saturation_lower = 9 [default = 0.0];
// Upper bound for the random saturation factor. Recommend 1.5.
optional float saturation_upper = 10 [default = 0.0];
// The probability of randomly order the image channels.
optional float random_order_prob = 11 [default = 0.0];
}
// Message that stores parameters used by data transformer for expansion policy
message ExpansionParameter {
//Probability of using this expansion policy
optional float prob = 1 [default = 1];
// The ratio to expand the image.
optional float max_expand_ratio = 2 [default = 1.];
}
// Message that stores parameters shared by loss layers
message LossParameter {
// If specified, ignore instances with the given label.
optional int32 ignore_label = 1;
// How to normalize the loss for loss layers that aggregate across batches,
// spatial dimensions, or other dimensions. Currently only implemented in
// SoftmaxWithLoss and SigmoidCrossEntropyLoss layers.
enum NormalizationMode {
// Divide by the number of examples in the batch times spatial dimensions.
// Outputs that receive the ignore label will NOT be ignored in computing
// the normalization factor.
FULL = 0;
// Divide by the total number of output locations that do not take the
// ignore_label. If ignore_label is not set, this behaves like FULL.
VALID = 1;
// Divide by the batch size.
BATCH_SIZE = 2;
// Do not normalize the loss.
NONE = 3;
}
// For historical reasons, the default normalization for
// SigmoidCrossEntropyLoss is BATCH_SIZE and *not* VALID.
optional NormalizationMode normalization = 3 [default = VALID];
// Deprecated. Ignored if normalization is specified. If normalization
// is not specified, then setting this to false will be equivalent to
// normalization = BATCH_SIZE to be consistent with previous behavior.
optional bool normalize = 2;
}
// Messages that store parameters used by individual layer types follow, in
// alphabetical order.
message AccuracyParameter {
// When computing accuracy, count as correct by comparing the true label to
// the top k scoring classes. By default, only compare to the top scoring
// class (i.e. argmax).
optional uint32 top_k = 1 [default = 1];
// The "label" axis of the prediction blob, whose argmax corresponds to the
// predicted label -- may be negative to index from the end (e.g., -1 for the
// last axis). For example, if axis == 1 and the predictions are
// (N x C x H x W), the label blob is expected to contain N*H*W ground truth
// labels with integer values in {0, 1, ..., C-1}.
optional int32 axis = 2 [default = 1];
// If specified, ignore instances with the given label.
optional int32 ignore_label = 3;
}
message AnnotatedDataParameter {
// Define the sampler.
repeated BatchSampler batch_sampler = 1;
// Store label name and label id in LabelMap format.
optional string label_map_file = 2;
// If provided, it will replace the AnnotationType stored in each
// AnnotatedDatum.
optional AnnotatedDatum.AnnotationType anno_type = 3;
}
message ArgMaxParameter {
// If true produce pairs (argmax, maxval)
optional bool out_max_val = 1 [default = false];
optional uint32 top_k = 2 [default = 1];
// The axis along which to maximise -- may be negative to index from the
// end (e.g., -1 for the last axis).
// By default ArgMaxLayer maximizes over the flattened trailing dimensions
// for each index of the first / num dimension.
optional int32 axis = 3;
}
message ConcatParameter {
// The axis along which to concatenate -- may be negative to index from the
// end (e.g., -1 for the last axis). Other axes must have the
// same dimension for all the bottom blobs.
// By default, ConcatLayer concatenates blobs along the "channels" axis (1).
optional int32 axis = 2 [default = 1];
// DEPRECATED: alias for "axis" -- does not support negative indexing.
optional uint32 concat_dim = 1 [default = 1];
}
message BatchNormParameter {
// If false, accumulate global mean/variance values via a moving average. If
// true, use those accumulated values instead of computing mean/variance
// across the batch.
optional bool use_global_stats = 1;
// How much does the moving average decay each iteration?
optional float moving_average_fraction = 2 [default = .999];
// Small value to add to the variance estimate so that we don't divide by
// zero.
optional float eps = 3 [default = 1e-5];
}
message BiasParameter {
// The first axis of bottom[0] (the first input Blob) along which to apply
// bottom[1] (the second input Blob). May be negative to index from the end
// (e.g., -1 for the last axis).
//
// For example, if bottom[0] is 4D with shape 100x3x40x60, the output
// top[0] will have the same shape, and bottom[1] may have any of the
// following shapes (for the given value of axis):
// (axis == 0 == -4) 100; 100x3; 100x3x40; 100x3x40x60
// (axis == 1 == -3) 3; 3x40; 3x40x60
// (axis == 2 == -2) 40; 40x60
// (axis == 3 == -1) 60
// Furthermore, bottom[1] may have the empty shape (regardless of the value of
// "axis") -- a scalar bias.
optional int32 axis = 1 [default = 1];
// (num_axes is ignored unless just one bottom is given and the bias is
// a learned parameter of the layer. Otherwise, num_axes is determined by the
// number of axes by the second bottom.)
// The number of axes of the input (bottom[0]) covered by the bias
// parameter, or -1 to cover all axes of bottom[0] starting from `axis`.
// Set num_axes := 0, to add a zero-axis Blob: a scalar.
optional int32 num_axes = 2 [default = 1];
// (filler is ignored unless just one bottom is given and the bias is
// a learned parameter of the layer.)
// The initialization for the learned bias parameter.
// Default is the zero (0) initialization, resulting in the BiasLayer
// initially performing the identity operation.
optional FillerParameter filler = 3;
}
message ContrastiveLossParameter {
// margin for dissimilar pair
optional float margin = 1 [default = 1.0];
// The first implementation of this cost did not exactly match the cost of
// Hadsell et al 2006 -- using (margin - d^2) instead of (margin - d)^2.
// legacy_version = false (the default) uses (margin - d)^2 as proposed in the
// Hadsell paper. New models should probably use this version.
// legacy_version = true uses (margin - d^2). This is kept to support /
// reproduce existing models and results
optional bool legacy_version = 2 [default = false];
}
message ConvolutionParameter {
optional uint32 num_output = 1; // The number of outputs for the layer
optional bool bias_term = 2 [default = true]; // whether to have bias terms
// Pad, kernel size, and stride are all given as a single value for equal
// dimensions in all spatial dimensions, or once per spatial dimension.
repeated uint32 pad = 3; // The padding size; defaults to 0
repeated uint32 kernel_size = 4; // The kernel size
repeated uint32 stride = 6; // The stride; defaults to 1
// Factor used to dilate the kernel, (implicitly) zero-filling the resulting
// holes. (Kernel dilation is sometimes referred to by its use in the
// algorithme à trous from Holschneider et al. 1987.)
repeated uint32 dilation = 18; // The dilation; defaults to 1
// For 2D convolution only, the *_h and *_w versions may also be used to
// specify both spatial dimensions.
optional uint32 pad_h = 9 [default = 0]; // The padding height (2D only)
optional uint32 pad_w = 10 [default = 0]; // The padding width (2D only)
optional uint32 kernel_h = 11; // The kernel height (2D only)
optional uint32 kernel_w = 12; // The kernel width (2D only)
optional uint32 stride_h = 13; // The stride height (2D only)
optional uint32 stride_w = 14; // The stride width (2D only)
optional uint32 group = 5 [default = 1]; // The group size for group conv
optional FillerParameter weight_filler = 7; // The filler for the weight
optional FillerParameter bias_filler = 8; // The filler for the bias
enum Engine {
DEFAULT = 0;
CAFFE = 1;
CUDNN = 2;
}
optional Engine engine = 15 [default = DEFAULT];
// The axis to interpret as "channels" when performing convolution.
// Preceding dimensions are treated as independent inputs;
// succeeding dimensions are treated as "spatial".
// With (N, C, H, W) inputs, and axis == 1 (the default), we perform
// N independent 2D convolutions, sliding C-channel (or (C/g)-channels, for
// groups g>1) filters across the spatial axes (H, W) of the input.
// With (N, C, D, H, W) inputs, and axis == 1, we perform
// N independent 3D convolutions, sliding (C/g)-channels
// filters across the spatial axes (D, H, W) of the input.
optional int32 axis = 16 [default = 1];
// Whether to force use of the general ND convolution, even if a specific
// implementation for blobs of the appropriate number of spatial dimensions
// is available. (Currently, there is only a 2D-specific convolution
// implementation; for input blobs with num_axes != 2, this option is
// ignored and the ND implementation will be used.)
optional bool force_nd_im2col = 17 [default = false];
optional bool half_pad = 19 [default = false];
}
message CropParameter {
// To crop, elements of the first bottom are selected to fit the dimensions
// of the second, reference bottom. The crop is configured by
// - the crop `axis` to pick the dimensions for cropping
// - the crop `offset` to set the shift for all/each dimension
// to align the cropped bottom with the reference bottom.
// All dimensions up to but excluding `axis` are preserved, while
// the dimensions including and trailing `axis` are cropped.
// If only one `offset` is set, then all dimensions are offset by this amount.
// Otherwise, the number of offsets must equal the number of cropped axes to
// shift the crop in each dimension accordingly.
// Note: standard dimensions are N,C,H,W so the default is a spatial crop,
// and `axis` may be negative to index from the end (e.g., -1 for the last
// axis).
optional int32 axis = 1 [default = 2];
repeated uint32 offset = 2;
}
message DataParameter {
enum DB {
LEVELDB = 0;
LMDB = 1;
}
// Specify the data source.
optional string source = 1;
// Specify the batch size.
optional uint32 batch_size = 4;
// The rand_skip variable is for the data layer to skip a few data points
// to avoid all asynchronous sgd clients to start at the same point. The skip
// point would be set as rand_skip * rand(0,1). Note that rand_skip should not
// be larger than the number of keys in the database.
// DEPRECATED. Each solver accesses a different subset of the database.
optional uint32 rand_skip = 7 [default = 0];
optional DB backend = 8 [default = LEVELDB];
// DEPRECATED. See TransformationParameter. For data pre-processing, we can do
// simple scaling and subtracting the data mean, if provided. Note that the
// mean subtraction is always carried out before scaling.
optional float scale = 2 [default = 1];
optional string mean_file = 3;
// DEPRECATED. See TransformationParameter. Specify if we would like to randomly
// crop an image.
optional uint32 crop_size = 5 [default = 0];
// DEPRECATED. See TransformationParameter. Specify if we want to randomly mirror
// data.
optional bool mirror = 6 [default = false];
// Force the encoded image to have 3 color channels
optional bool force_encoded_color = 9 [default = false];
// Prefetch queue (Number of batches to prefetch to host memory, increase if
// data access bandwidth varies).
optional uint32 prefetch = 10 [default = 4];
}
// Message that store parameters used by DetectionEvaluateLayer
message DetectionEvaluateParameter {
// Number of classes that are actually predicted. Required!
optional uint32 num_classes = 1;
// Label id for background class. Needed for sanity check so that
// background class is neither in the ground truth nor the detections.
optional uint32 background_label_id = 2 [default = 0];
// Threshold for deciding true/false positive.
optional float overlap_threshold = 3 [default = 0.5];
// If true, also consider difficult ground truth for evaluation.
optional bool evaluate_difficult_gt = 4 [default = true];
// A file which contains a list of names and sizes with same order
// of the input DB. The file is in the following format:
// name height width
// ...
// If provided, we will scale the prediction and ground truth NormalizedBBox
// for evaluation.
optional string name_size_file = 5;
// The resize parameter used in converting NormalizedBBox to original image.
optional ResizeParameter resize_param = 6;
}
message NonMaximumSuppressionParameter {
// Threshold to be used in nms.
optional float nms_threshold = 1 [default = 0.3];
// Maximum number of results to be kept.
optional int32 top_k = 2;
// Parameter for adaptive nms.
optional float eta = 3 [default = 1.0];
}
message SaveOutputParameter {
// Output directory. If not empty, we will save the results.
optional string output_directory = 1;
// Output name prefix.
optional string output_name_prefix = 2;
// Output format.
// VOC - PASCAL VOC output format.
// COCO - MS COCO output format.
optional string output_format = 3;
// If you want to output results, must also provide the following two files.
// Otherwise, we will ignore saving results.
// label map file.
optional string label_map_file = 4;
// A file which contains a list of names and sizes with same order
// of the input DB. The file is in the following format:
// name height width
// ...