Releases
v0.8.0
MMClassification Release V0.8.0
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Fix bug in 2 ResNet configs in which outdated heads were used.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 )
You can’t perform that action at this time.