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This is the roadmap for ssds.pytorch v1.5. The development for ssds.pytorch v1.5 is fully reconstruct and almost done. The main features are listed at here:
add training, validation, and inference support for pytorch v1.5 based model;
add support to convert the model from pytorch to onnx, and allows the user to convert the onnx model the tensorrt 7 through the code in retinanet-examples.
Dataset:
remove the current the voc dataset;
add the dalicoco and dalitfrecord dataset for fast data loading.
Anchor box matching:
remove the current anchor mathcing strategy;
add the anchor box matching for each level to make user understand ssd-like training and inference easier.
Loss:
FocalLoss
SmoothL1
IOU, GIOU, DIOU, CIOU Loss
MultiBoxLoss (Not recommend, not fully tested)
Pipeline:
add DataParallel for basic multiple gpu or single gpu training (slow)
add apex for multiple gpu training (fast)
Visualization:
add visualization for anchor strategy in each feature map (the distribution of scale and ratio in the dataset);
add visualization for defualt anchor boxes in each feature map;
prepare the images for readme.
Support SSDs head:
ssd;
fpn in retinanet;
bifpn in efficientdet;
yolov3 and yolov4
shelf in shelfnet
Support backbone (feature extractor):
resnet
regnetx
mobilenet v1 and v2
shufflenet v2
darknet
densenet
efficientNet (memory cost)
Others:
Provide the dockerfile to allow user directly build the ssds.pytorch docker quickly;
Provide the setup.py to allow user directly install the ssds.pytorch by pip;
Prepare the pretrained models for different backbone and detection heads.
Bug Fix:
Please let me know if you have any problem when you use the ssds.pytorch or any suggestion to make the ssds.pytorch better!
The text was updated successfully, but these errors were encountered:
This is the roadmap for ssds.pytorch v1.5. The development for ssds.pytorch v1.5 is fully reconstruct and almost done. The main features are listed at here:
Documentations:
Framework:
Dataset:
Anchor box matching:
Loss:
Pipeline:
Visualization:
Support SSDs head:
Support backbone (feature extractor):
Others:
Bug Fix:
Please let me know if you have any problem when you use the ssds.pytorch or any suggestion to make the ssds.pytorch better!
The text was updated successfully, but these errors were encountered: