Releases: ayoolaolafenwa/PixelLib
Gadgets
Merge pull request #124 from prateekralhan/master Streamlit based Webapps using PixelLib
PointRend models
PointRend models from Detectron2(https://github.com/facebookresearch/detectron2/tree/main/projects/PointRend)
pixellib.whl
This is the release that contains information about different versions of pixellib packages.
0.7.1: Fixed a bug.
0.7.0: PixelLib Pytorch Version with the following new features;
- PointRend is used for segmentation of objects in images and videos.
- Supports extraction of objects from their bounding boxes' coordinates and masks' values.
- Faster and more accurate than the tensorflow version:
It achieves 0.26 seconds for processing a single image and 4fps for live camera feeds.
Using A TargetSize of 667 * 447: It achieves 0.20 seconds for processing a single image and 6fps for live camera feeds.
Using A TargetSize of 333 * 200: It achieves 0.15 seconds for processing a single image and 9fps for live camera feeds.
0.6.6: Added support for the following features;
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Batch image segmentation.
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Ability to change the threshold for performing trained model evaluation.
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Ability to change the size and thickness of the label names and bounding boxes for visualization of segmented images.
0.6.1: Fixed a bug.
0.6.0: It provides support for extraction of segmented objects in video files and live camera feeds.
0.5.5: It provides support for extraction of segmented objects in images and the ability to filter coco model detections to segment a user's target class.
0.5.2: Added the ability to return the polygon points' values of masks.
0.4.9: Added the ability to choose the inference speed mode for instance segmentation.
0.4.8: It provides the ability to change the background of video files and live camera feeds.
0.4.0: It provides the ability to change the background of images.
0.3.0: It provides support for custom training.
0.2.1: Fixed a bug.
0.2.0: It provides support for segmentation of objects in video files, live camera feeds and semantic segmentation of 150 classes of objects.
0.1.0: It provides support for semantic segmentation of 20 classes of objects and instance segmentation of 80 classes of objects.
Nature
1.0.0 updated
Xception_pretrained_model_ade20k
Keras model extracted from Ade20k tensorflow model's checkpoint.
source: https://github.com/tensorflow/models/blob/master/research/deeplab/g3doc/model_zoo.md
Mask R-CNN model
Mask R-CNN model trained on coco dataset.
Source:https://github.com/matterport/Mask_RCNN/releases/tag/v2.0
Xception_pretrained_model_pascalvoc
This release contains deeplabv3+ models trained on pascalvoc dataset.
Tensorflow model.
source: https://github.com/tensorflow/models/blob/master/research/deeplab/g3doc/model_zoo.md
Keras model extracted from the tensorflow model's checkpoint.
source: https://github.com/bonlime/keras-deeplab-v3-plus