## Changelog ### v0.9.0(1/3/2021) - Implement mixup trick. - Add a new tool to create TensorRT engine from ONNX, run inference and verify outputs in Python. #### New Features - Implement mixup and provide configs of training ResNet50 using mixup. (#160) - Add `Shear` pipeline for data augmentation. (#163) - Add `Translate` pipeline for data augmentation. (#165) - Add `tools/onnx2tensorrt.py` as a tool to create TensorRT engine from ONNX, run inference and verify outputs in Python. (#153) #### Improvements - Add `--eval-options` in `tools/test.py` to support eval options override, matching the behavior of other open-mmlab projects. (#158) - Support showing and saving painted results in `mmcls.apis.test` and `tools/test.py`, matching the behavior of other open-mmlab projects. (#162) #### Bug Fixes - Fix configs for VGG, replace checkpoints converted from other repos with the ones trained by ourselves and upload the missing logs in the model zoo. (#161) ### v0.8.0(31/1/2021) - Support multi-label task. - Support more flexible metrics settings. - Fix bugs. #### New Features - Add evaluation metrics: mAP, CP, CR, CF1, OP, OR, OF1 for multi-label task. (#123) - Add BCE loss for multi-label task. (#130) - Add focal loss for multi-label task. (#131) - Support PASCAL VOC 2007 dataset for multi-label task. (#134) - Add asymmetric loss for multi-label task. (#132) - Add analyze_results.py to select images for success/fail demonstration. (#142) - Support new metric that calculates the total number of occurrences of each label. (#143) - Support class-wise evaluation results. (#143) - Add thresholds in eval_metrics. (#146) - Add heads and a baseline config for multilabel task. (#145) #### Improvements - Remove the models with 0 checkpoint and ignore the repeated papers when counting papers to gain more accurate model statistics. (#135) - Add tags in README.md. (#137) - Fix optional issues in docstring. (#138) - Update stat.py to classify papers. (#139) - Fix mismatched columns in README.md. (#150) - Fix test.py to support more evaluation metrics. (#155) #### Bug Fixes - Fix bug in VGG weight_init. (#140) - Fix bug in 2 ResNet configs in which outdated heads were used. (#147) - Fix bug of misordered height and width in `RandomCrop` and `RandomResizedCrop`. (#151) - Fix missing `meta_keys` in `Collect`. (#149 & #152) ### v0.7.0(31/12/2020) - Add more evaluation metrics. - Fix bugs. #### New Features - Remove installation of MMCV from requirements. (#90) - Add 3 evaluation metrics: precision, recall and F-1 score. (#93) - Allow config override during testing and inference with `--options`. (#91 & #96) #### Improvements - Use `build_runner` to make runners more flexible. (#54) - Support to get category ids in `BaseDataset`. (#72) - Allow `CLASSES` override during `BaseDateset` initialization. (#85) - Allow input image as ndarray during inference. (#87) - Optimize MNIST config. (#98) - Add config links in model zoo documentation. (#99) - Use functions from MMCV to collect environment. (#103) - Refactor config files so that they are now categorized by methods. (#116) - Add README in config directory. (#117) - Add model statistics. (#119) - Refactor documentation in consistency with other MM repositories. (#126) #### Bug Fixes - Add missing `CLASSES` argument to dataset wrappers. (#66) - Fix slurm evaluation error during training. (#69) - Resolve error caused by shape in `Accuracy`. (#104) - Fix bug caused by extremely insufficient data in distributed sampler.(#108) - Fix bug in `gpu_ids` in distributed training. (#107) - Fix bug caused by extremely insufficient data in collect results during testing (#114) ### v0.6.0(11/10/2020) - Support new method: ResNeSt and VGG. - Support new dataset: CIFAR10. - Provide new tools to do model inference, model conversion from pytorch to onnx. #### New Features - Add model inference. (#16) - Add pytorch2onnx. (#20) - Add PIL backend for transform `Resize`. (#21) - Add ResNeSt. (#25) - Add VGG and its pretained models. (#27) - Add CIFAR10 configs and models. (#38) - Add albumentations transforms. (#45) - Visualize results on image demo. (#58) #### Improvements - Replace urlretrieve with urlopen in dataset.utils. (#13) - Resize image according to its short edge. (#22) - Update ShuffleNet config. (#31) - Update pre-trained models for shufflenet_v2, shufflenet_v1, se-resnet50, se-resnet101. (#33) #### Bug Fixes - Fix init_weights in `shufflenet_v2.py`. (#29) - Fix the parameter `size` in test_pipeline. (#30) - Fix the parameter in cosine lr schedule. (#32) - Fix the convert tools for mobilenet_v2. (#34) - Fix crash in CenterCrop transform when image is greyscale (#40) - Fix outdated configs. (#53)