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detr_demo.py
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detr_demo.py
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#%%
# Commented out IPython magic to ensure Python compatibility.
from PIL import Image
import requests
import matplotlib.pyplot as plt
# %config InlineBackend.figure_format = 'retina'
import torch
from torch import nn
from torchvision.models import resnet50
import torchvision.transforms as T
torch.set_grad_enabled(False);
#%%
class DETRdemo(nn.Module):
"""
Demo DETR implementation.
Demo implementation of DETR in minimal number of lines, with the
following differences wrt DETR in the paper:
* learned positional encoding (instead of sine)
* positional encoding is passed at input (instead of attention)
* fc bbox predictor (instead of MLP)
The model achieves ~40 AP on COCO val5k and runs at ~28 FPS on Tesla V100.
Only batch size 1 supported.
"""
def __init__(self, num_classes, hidden_dim=256, nheads=8,
num_encoder_layers=6, num_decoder_layers=6):
super().__init__()
# create ResNet-50 backbone
self.backbone = resnet50()
del self.backbone.fc
# create conversion layer
self.conv = nn.Conv2d(2048, hidden_dim, 1)
# create a default PyTorch transformer
self.transformer = nn.Transformer(
hidden_dim, nheads, num_encoder_layers, num_decoder_layers)
# prediction heads, one extra class for predicting non-empty slots
# note that in baseline DETR linear_bbox layer is 3-layer MLP
self.linear_class = nn.Linear(hidden_dim, num_classes + 1)
self.linear_bbox = nn.Linear(hidden_dim, 4)
# output positional encodings (object queries)
self.query_pos = nn.Parameter(torch.rand(100, hidden_dim))
# spatial positional encodings
# note that in baseline DETR we use sine positional encodings
self.row_embed = nn.Parameter(torch.rand(50, hidden_dim // 2))
self.col_embed = nn.Parameter(torch.rand(50, hidden_dim // 2))
def forward(self, inputs):
# propagate inputs through ResNet-50 up to avg-pool layer
x = self.backbone.conv1(inputs)
x = self.backbone.bn1(x)
x = self.backbone.relu(x)
x = self.backbone.maxpool(x)
x = self.backbone.layer1(x)
x = self.backbone.layer2(x)
x = self.backbone.layer3(x)
x = self.backbone.layer4(x)
# convert from 2048 to 256 feature planes for the transformer
h = self.conv(x)
# construct positional encodings
H, W = h.shape[-2:]
pos = torch.cat([
self.col_embed[:W].unsqueeze(0).repeat(H, 1, 1),
self.row_embed[:H].unsqueeze(1).repeat(1, W, 1),
], dim=-1).flatten(0, 1).unsqueeze(1)
# propagate through the transformer
h = self.transformer(pos + 0.1 * h.flatten(2).permute(2, 0, 1),
self.query_pos.unsqueeze(1)).transpose(0, 1)
# finally project transformer outputs to class labels and bounding boxes
return {'pred_logits': self.linear_class(h),
'pred_boxes': self.linear_bbox(h).sigmoid()}
#%%
detr = DETRdemo(num_classes=91)
state_dict = torch.hub.load_state_dict_from_url(
url='https://dl.fbaipublicfiles.com/detr/detr_demo-da2a99e9.pth',
map_location='cpu', check_hash=True)
detr.load_state_dict(state_dict)
detr.eval();
#%%
"""## Computing predictions with DETR
The pre-trained DETR model that we have just loaded has been trained on the 80 COCO classes, with class indices ranging from 1 to 90 (that's why we considered 91 classes in the model construction).
In the following cells, we define the mapping from class indices to names.
"""
# COCO classes
CLASSES = [
'N/A', 'person', 'bicycle', 'car', 'motorcycle', 'airplane', 'bus',
'train', 'truck', 'boat', 'traffic light', 'fire hydrant', 'N/A',
'stop sign', 'parking meter', 'bench', 'bird', 'cat', 'dog', 'horse',
'sheep', 'cow', 'elephant', 'bear', 'zebra', 'giraffe', 'N/A', 'backpack',
'umbrella', 'N/A', 'N/A', 'handbag', 'tie', 'suitcase', 'frisbee', 'skis',
'snowboard', 'sports ball', 'kite', 'baseball bat', 'baseball glove',
'skateboard', 'surfboard', 'tennis racket', 'bottle', 'N/A', 'wine glass',
'cup', 'fork', 'knife', 'spoon', 'bowl', 'banana', 'apple', 'sandwich',
'orange', 'broccoli', 'carrot', 'hot dog', 'pizza', 'donut', 'cake',
'chair', 'couch', 'potted plant', 'bed', 'N/A', 'dining table', 'N/A',
'N/A', 'toilet', 'N/A', 'tv', 'laptop', 'mouse', 'remote', 'keyboard',
'cell phone', 'microwave', 'oven', 'toaster', 'sink', 'refrigerator', 'N/A',
'book', 'clock', 'vase', 'scissors', 'teddy bear', 'hair drier',
'toothbrush'
]
# colors for visualization
COLORS = [[0.000, 0.447, 0.741], [0.850, 0.325, 0.098], [0.929, 0.694, 0.125],
[0.494, 0.184, 0.556], [0.466, 0.674, 0.188], [0.301, 0.745, 0.933]]
"""DETR uses standard ImageNet normalization, and output boxes in relative image coordinates in $[x_{\text{center}}, y_{\text{center}}, w, h]$ format, where $[x_{\text{center}}, y_{\text{center}}]$ is the predicted center of the bounding box, and $w, h$ its width and height. Because the coordinates are relative to the image dimension and lies between $[0, 1]$, we convert predictions to absolute image coordinates and $[x_0, y_0, x_1, y_1]$ format for visualization purposes."""
# standard PyTorch mean-std input image normalization
transform = T.Compose([
T.Resize(size = (800,800)),
T.ToTensor(),
T.Normalize([0.485, 0.456, 0.406], [0.229, 0.224, 0.225])
])
# for output bounding box post-processing
def box_cxcywh_to_xyxy(x):
x_c, y_c, w, h = x.unbind(1)
b = [(x_c - 0.5 * w), (y_c - 0.5 * h),
(x_c + 0.5 * w), (y_c + 0.5 * h)]
return torch.stack(b, dim=1)
def rescale_bboxes(out_bbox, size):
img_w, img_h = size
b = box_cxcywh_to_xyxy(out_bbox)
b = b * torch.tensor([img_w, img_h, img_w, img_h], dtype=torch.float32)
return b
"""Let's put everything together in a `detect` function:"""
def detect(im, model, transform):
# mean-std normalize the input image (batch-size: 1)
img = transform(im).unsqueeze(0)
# demo model only support by default images with aspect ratio between 0.5 and 2
# if you want to use images with an aspect ratio outside this range
# rescale your image so that the maximum size is at most 1333 for best results
assert img.shape[-2] <= 1600 and img.shape[-1] <= 1600, 'demo model only supports images up to 1600 pixels on each side'
# propagate through the model
outputs = model(img)
# keep only predictions with 0.7+ confidence
probas = outputs['pred_logits'].softmax(-1)[0, :, :-1]
keep = probas.max(-1).values > 0.7
# convert boxes from [0; 1] to image scales
bboxes_scaled = rescale_bboxes(outputs['pred_boxes'][0, keep], im.size)
return probas[keep], bboxes_scaled
"""## Using DETR
To try DETRdemo model on your own image just change the URL below.
"""
#%%
url = 'https://tryolabs.com/blog/images/blog/post-images/2018-03-01-guide-to-visual-question-answering/dataset-coco-qa.fc71ab77.jpg'
im = Image.open(requests.get(url, stream=True).raw)
#%%
scores, boxes = detect(im, detr, transform)
#%%
def plot_results(pil_img, prob, boxes):
plt.figure(figsize=(16,10))
plt.imshow(pil_img)
ax = plt.gca()
for p, (xmin, ymin, xmax, ymax), c in zip(prob, boxes.tolist(), COLORS * 100):
ax.add_patch(plt.Rectangle((xmin, ymin), xmax - xmin, ymax - ymin,
fill=False, color=c, linewidth=3))
cl = p.argmax()
text = f'{CLASSES[cl]}: {p[cl]:0.2f}'
ax.text(xmin, ymin, text, fontsize=15,
bbox=dict(facecolor='yellow', alpha=0.5))
plt.axis('off')
plt.show()
plot_results(im, scores, boxes)
# %%