New Features
- Support Delving into High-Quality Synthetic Face Occlusion Segmentation Datasets (#2194)
Bug Fixes
- Fix incorrect
test_cfg
setting in UNet base configs (#2347) - Fix KNet
IterativeDecodeHead
bug in master branch (#2333) - Fix deadlock issue related with MMSegWandbHook (#2398)
Enhancement
- Update CI and pre-commit checking (#2309,#2331)
- Add
Projects/
folder, and the first example project in 0.x (#2457) - Fix the deprecation of
np.float
and CI configuration problems (#2451)
Documentation
- Add high quality synthetic face occlusion dataset link to readme (#2453)
- Fix the docstring error in the
PascalContextDataset59
class (#2450)
Contributors
- @smttsp made their first contribution in open-mmlab/mmsegmentation#2347
- @MilkClouds made their first contribution in open-mmlab/mmsegmentation#2398
- @Spritea made their first contribution in open-mmlab/mmsegmentation#2450
New Features
- Add model ensemble tools (#2218)
Bug Fixes
- Use SyncBN in MobileNetV2 (#2207)
Documentation
- Update FAQ doc about binary segmentation and ReduceZeroLabel (#2206)
- Fix typos (#2249)
- Fix model results (#2190, #2114)
Contributors
- @isLinXu made their first contribution in open-mmlab/mmsegmentation#2219
- @zhijiejia made their first contribution in open-mmlab/mmsegmentation#2218
- @lee-jinhee made their first contribution in open-mmlab/mmsegmentation#2249
New Features
- Support PoolFormer (CVPR'2022) (#1537)
Enhancement
- Improve structure and readability for FCNHead (#2142)
- Support IterableDataset in distributed training (#2151)
- Upgrade .dev scripts (#2020)
- Upgrade pre-commit hooks (#2155)
Bug Fixes
- Fix mmseg.api.inference inference_segmentor (#1849)
- fix bug about label_map in evaluation part (#2075)
- Add missing dependencies to torchserve docker file (#2133)
- Fix ddp unittest (#2060)
Contributors
- @jinwonkim93 made their first contribution in open-mmlab/mmsegmentation#1849
- @rlatjcj made their first contribution in open-mmlab/mmsegmentation#2075
- @ShirleyWangCVR made their first contribution in open-mmlab/mmsegmentation#2151
- @mangelroman made their first contribution in open-mmlab/mmsegmentation#2133
New Features
- Support Tversky Loss (#1896)
Bug Fixes
- Fix binary segmentation (#2016)
- Fix config files (#1901, #1893, #1871)
- Revise documentation (#1844, #1980, #2025, #1982)
- Fix confusion matrix calculation (#1992)
- Fix decode head forward_train error (#1997)
Contributors
- @suchot made their first contribution in https://github.com/open-mmlab/mmsegmention/pull/1844
- @TimoK93 made their first contribution in open-mmlab/mmsegmentation#1992
Enhancement
Bug Fixes
- Revise documentation (#1761, #1755, #1802)
- Fix colab tutorial (#1779)
- Fix segformer checkpoint url (#1785)
Contributors
- @DataSttructure made their first contribution in open-mmlab/mmsegmentation#1802
- @AkideLiu made their first contribution in open-mmlab/mmsegmentation#1785
- @mawanda-jun made their first contribution in open-mmlab/mmsegmentation#1761
- @Yan-Daojiang made their first contribution in open-mmlab/mmsegmentation#1755
Highlights
New Features
- Update New SegFormer models on ADE20K (1705)
- Dedicated MMSegWandbHook for MMSegmentation (1603)
- Add UPerNet r18 results (1669)
Enhancement
- Keep dimension of
cls_token_weight
for easier ONNX deployment (1642) - Support infererence with padding (1607)
Bug Fixes
Documentation
- Fix
mdformat
version to support python3.6 and remove ruby installation (1672)
Contributors
- @RunningLeon made their first contribution in open-mmlab/mmsegmentation#1642
- @zhouzaida made their first contribution in open-mmlab/mmsegmentation#1655
- @tkhe made their first contribution in open-mmlab/mmsegmentation#1667
- @rotorliu made their first contribution in open-mmlab/mmsegmentation#1656
- @EvelynWang-0423 made their first contribution in open-mmlab/mmsegmentation#1679
- @ZhaoYi1222 made their first contribution in open-mmlab/mmsegmentation#1616
- @Sanster made their first contribution in open-mmlab/mmsegmentation#1704
- @ayulockin made their first contribution in open-mmlab/mmsegmentation#1603
Highlights
- Support PyTorch backend on MLU (1515)
Bug Fixes
- Fix the error of BCE loss when batch size is 1 (1629)
- Fix bug of
resize
function when align_corners is True (1592) - Fix Dockerfile to run demo script in docker container (1568)
- Correct inference_demo.ipynb path (1576)
- Fix the
build_segmentor
in colab demo (1551) - Fix md2yml script (1633, 1555)
- Fix main line link in MAE README.md (1556)
- Fix fastfcn
crop_size
in README.md by (1597) - Pip upgrade when testing windows platform (1610)
Improvements
Documentation
- Rewrite the installation guidance (1630)
- Format readme (1635)
- Replace markdownlint with mdformat to avoid ruby installation (1591)
- Add explanation and usage instructions for data configuration (1548)
- Configure Myst-parser to parse anchor tag (1589)
- Update QR code and link for QQ group (1598, 1574)
Contributors
- @atinfinity made their first contribution in open-mmlab/mmsegmentation#1568
- @DoubleChuang made their first contribution in open-mmlab/mmsegmentation#1576
- @alpha-baymax made their first contribution in open-mmlab/mmsegmentation#1515
- @274869388 made their first contribution in open-mmlab/mmsegmentation#1629
Bug Fixes
Highlights
- Support MAE: Masked Autoencoders Are Scalable Vision Learners
- Support Resnet strikes back
New Features
- Support MAE: Masked Autoencoders Are Scalable Vision Learners (1307, 1523)
- Support Resnet strikes back (1390)
- Support extra dataloader settings in configs (1435)
Bug Fixes
- Fix input previous results for the last cascade_decode_head (#1450)
- Fix validation loss logging (#1494)
- Fix the bug in binary_cross_entropy (1527)
- Support single channel prediction for Binary Cross Entropy Loss (#1454)
- Fix potential bugs in accuracy.py (1496)
- Avoid converting label ids twice by label map during evaluation (1417)
- Fix bug about label_map (1445)
- Fix image save path bug in Windows (1423)
- Fix MMSegmentation Colab demo (1501, 1452)
- Migrate azure blob for beit checkpoints (1503)
- Fix bug in
tools/analyse_logs.py
caused by wrong plot_iter in some cases (1428)
Improvements
- Merge BEiT and ConvNext's LR decay optimizer constructors (#1438)
- Register optimizer constructor with mmseg (#1456)
- Refactor transformer encode layer in ViT and BEiT backbone (#1481)
- Add
build_pos_embed
andbuild_layers
for BEiT (1517) - Add
with_cp
to mit and vit (1431) - Fix inconsistent dtype of
seg_label
in stdc decode (1463) - Delete random seed for training in
dist_train.sh
(1519) - Revise high
workers_per_gpus
in config file (#1506) - Add GPG keys and del mmcv version in Dockerfile (1534)
- Update checkpoint for model in deeplabv3plus (#1487)
- Add
DistSamplerSeedHook
to set epoch number to dataloader when runner isEpochBasedRunner
(1449) - Provide URLs of Swin Transformer pretrained models (1389)
- Updating Dockerfiles From Docker Directory and
get_started.md
to reach latest stable version of Python, PyTorch and MMCV (1446)
Documentation
- Add more clearly statement of CPU training/inference (1518)
Contributors
- @jiangyitong made their first contribution in open-mmlab/mmsegmentation#1431
- @kahkeng made their first contribution in open-mmlab/mmsegmentation#1447
- @Nourollah made their first contribution in open-mmlab/mmsegmentation#1446
- @androbaza made their first contribution in open-mmlab/mmsegmentation#1452
- @Yzichen made their first contribution in open-mmlab/mmsegmentation#1445
- @whu-pzhang made their first contribution in open-mmlab/mmsegmentation#1423
- @panfeng-hover made their first contribution in open-mmlab/mmsegmentation#1417
- @Johnson-Wang made their first contribution in open-mmlab/mmsegmentation#1496
- @jere357 made their first contribution in open-mmlab/mmsegmentation#1460
- @mfernezir made their first contribution in open-mmlab/mmsegmentation#1494
- @donglixp made their first contribution in open-mmlab/mmsegmentation#1503
- @YuanLiuuuuuu made their first contribution in open-mmlab/mmsegmentation#1307
- @Dawn-bin made their first contribution in open-mmlab/mmsegmentation#1527
Highlights
- Support BEiT: BERT Pre-Training of Image Transformers
- Support K-Net: Towards Unified Image Segmentation
- Add
avg_non_ignore
of CELoss to support average loss over non-ignored elements - Support dataset initialization with file client
New Features
- Support BEiT: BERT Pre-Training of Image Transformers (#1404)
- Support K-Net: Towards Unified Image Segmentation (#1289)
- Support dataset initialization with file client (#1402)
- Add class name function for STARE datasets (#1376)
- Support different seeds on different ranks when distributed training (#1362)
- Add
nlc2nchw2nlc
andnchw2nlc2nchw
to simplify tensor with different dimension operation (#1249)
Improvements
- Synchronize random seed for distributed sampler (#1411)
- Add script and documentation for multi-machine distributed training (#1383)
Bug Fixes
- Add
avg_non_ignore
of CELoss to support average loss over non-ignored elements (#1409) - Fix some wrong URLs of models or logs in
./configs
(#1336) - Add title and color theme arguments to plot function in
tools/confusion_matrix.py
(#1401) - Fix outdated link in Colab demo (#1392)
- Fix typos (#1424, #1405, #1371, #1366, #1363)
Documentation
Contributors
- @kinglintianxia made their first contribution in open-mmlab/mmsegmentation#1371
- @CCODING04 made their first contribution in open-mmlab/mmsegmentation#1376
- @mob5566 made their first contribution in open-mmlab/mmsegmentation#1401
- @xiongnemo made their first contribution in open-mmlab/mmsegmentation#1392
- @Xiangxu-0103 made their first contribution in open-mmlab/mmsegmentation#1405
Bug Fixes
- Fix the ZeroDivisionError that all pixels in one image is ignored. (#1336)
Improvements
- Provide URLs of STDC, Segmenter and Twins pretrained models (#1272)
Highlights
- Support ConvNeXt: A ConvNet for the 2020s. Please use the latest MMClassification (0.21.0) to try it out.
- Support iSAID aerial Dataset.
- Officially Support inference on Windows OS.
New Features
- Support ConvNeXt: A ConvNet for the 2020s. (#1216)
- Support iSAID aerial Dataset. (#1115
- Generating and plotting confusion matrix. (#1301)
Improvements
- Refactor 4 decoder heads (ASPP, FCN, PSP, UPer): Split forward function into
_forward_feature
andcls_seg
. (#1299) - Add
min_size
arg inResize
to keep the shape after resize bigger than slide window. (#1318) - Revise pre-commit-hooks. (#1315)
- Add win-ci. (#1296)
Bug Fixes
- Fix
mlp_ratio
type in Swin Transformer. (#1274) - Fix path errors in
./demo
. (#1269) - Fix bug in conversion of potsdam. (#1279)
- Make accuracy take into account
ignore_index
. (#1259) - Add Pytorch HardSwish assertion in unit test. (#1294)
- Fix wrong palette value in vaihingen. (#1292)
- Fix the bug that SETR cannot load pretrain. (#1293)
- Update correct
In Collection
in metafile of each configs. (#1239) - Upload completed STDC models. (#1332)
- Fix
DNLHead
exports onnx inference difference type Cast error. (#1161)
Contributors
- @JiaYanhao made their first contribution in open-mmlab/mmsegmentation#1269
- @andife made their first contribution in open-mmlab/mmsegmentation#1281
- @SBCV made their first contribution in open-mmlab/mmsegmentation#1279
- @HJoonKwon made their first contribution in open-mmlab/mmsegmentation#1259
- @Tsingularity made their first contribution in open-mmlab/mmsegmentation#1290
- @Waterman0524 made their first contribution in open-mmlab/mmsegmentation#1115
- @MeowZheng made their first contribution in open-mmlab/mmsegmentation#1315
- @linfangjian01 made their first contribution in open-mmlab/mmsegmentation#1318
Bug Fixes
- Fix typos in docs. (#1263)
- Fix repeating log by
setup_multi_processes
. (#1267) - Upgrade isort in pre-commit hook. (#1270)
Improvements
- Use MMCV load_state_dict func in ViT/Swin. (#1272)
- Add exception for PointRend for support CPU-only. (#1271)
Highlights
- Officially Support CPUs training and inference, please use the latest MMCV (1.4.4) to try it out.
- Support Segmenter: Transformer for Semantic Segmentation (ICCV'2021).
- Support ISPRS Potsdam and Vaihingen Dataset.
- Add Mosaic transform and
MultiImageMixDataset
class indataset_wrappers
.
New Features
- Support Segmenter: Transformer for Semantic Segmentation (ICCV'2021) (#955)
- Support ISPRS Potsdam and Vaihingen Dataset (#1097, #1171)
- Add segformer‘s benchmark on cityscapes (#1155)
- Add auto resume (#1172)
- Add Mosaic transform and
MultiImageMixDataset
class indataset_wrappers
(#1093, #1105) - Add log collector (#1175)
Improvements
- New-style CPU training and inference (#1251)
- Add UNet benchmark with multiple losses supervision (#1143)
Bug Fixes
- Fix the model statistics in doc for readthedoc (#1153)
- Set random seed for
palette
if not given (#1152) - Add
COCOStuffDataset
inclass_names.py
(#1222) - Fix bug in non-distributed multi-gpu training/testing (#1247)
- Delete unnecessary lines of STDCHead (#1231)
Contributors
- @jbwang1997 made their first contribution in open-mmlab/mmsegmentation#1152
- @BeaverCC made their first contribution in open-mmlab/mmsegmentation#1206
- @Echo-minn made their first contribution in open-mmlab/mmsegmentation#1214
- @rstrudel made their first contribution in open-mmlab/mmsegmentation#955
Bug Fixes
- Revise --option to --options to avoid BC-breaking. (#1140)
Improvements
- Change options to cfg-options (#1129)
Bug Fixes
- Fix
<!-- [ABSTRACT] -->
in metafile. (#1127) - Fix correct
num_classes
of HRNet inLoveDA
dataset (#1136)
Highlights
- Support Twins (#989)
- Support a real-time segmentation model STDC (#995)
- Support a widely-used segmentation model in lane detection ERFNet (#960)
- Support A Remote Sensing Land-Cover Dataset LoveDA (#1028)
- Support focal loss (#1024)
New Features
- Support Twins (#989)
- Support a real-time segmentation model STDC (#995)
- Support a widely-used segmentation model in lane detection ERFNet (#960)
- Add SETR cityscapes benchmark (#1087)
- Add BiSeNetV1 COCO-Stuff 164k benchmark (#1019)
- Support focal loss (#1024)
- Add Cutout transform (#1022)
Improvements
- Set a random seed when the user does not set a seed (#1039)
- Add CircleCI setup (#1086)
- Skip CI on ignoring given paths (#1078)
- Add abstract and image for every paper (#1060)
- Create a symbolic link on windows (#1090)
- Support video demo using trained model (#1014)
Bug Fixes
- Fix incorrectly loading init_cfg or pretrained models of several transformer models (#999, #1069, #1102)
- Fix EfficientMultiheadAttention in SegFormer (#1037)
- Remove
fp16
folder inconfigs
(#1031) - Fix several typos in .yml file (Dice Metric #1041, ADE20K dataset #1120, Training Memory (GB) #1083)
- Fix test error when using
--show-dir
(#1091) - Fix dist training infinite waiting issue (#1035)
- Change the upper version of mmcv to 1.5.0 (#1096)
- Fix symlink failure on Windows (#1038)
- Cancel previous runs that are not completed (#1118)
- Unified links of readthedocs in docs (#1119)
Contributors
- @Junjue-Wang made their first contribution in open-mmlab/mmsegmentation#1028
- @ddebby made their first contribution in open-mmlab/mmsegmentation#1066
- @del-zhenwu made their first contribution in open-mmlab/mmsegmentation#1078
- @KangBK0120 made their first contribution in open-mmlab/mmsegmentation#1106
- @zergzzlun made their first contribution in open-mmlab/mmsegmentation#1091
- @fingertap made their first contribution in open-mmlab/mmsegmentation#1035
- @irvingzhang0512 made their first contribution in open-mmlab/mmsegmentation#1014
- @littleSunlxy made their first contribution in open-mmlab/mmsegmentation#989
- @lkm2835
- @RockeyCoss
- @MengzhangLI
- @Junjun2016
- @xiexinch
- @xvjiarui
Highlights
- Support TIMMBackbone wrapper (#998)
- Support custom hook (#428)
- Add codespell pre-commit hook (#920)
- Add FastFCN benchmark on ADE20K (#972)
New Features
- Support TIMMBackbone wrapper (#998)
- Support custom hook (#428)
- Add FastFCN benchmark on ADE20K (#972)
- Add codespell pre-commit hook and fix typos (#920)
Improvements
- Make inputs & channels smaller in unittests (#1004)
- Change
self.loss_decode
back todict
in Single Loss situation (#1002)
Bug Fixes
- Fix typo in usage example (#1003)
- Add contiguous after permutation in ViT (#992)
- Fix the invalid link (#985)
- Fix bug in CI with python 3.9 (#994)
- Fix bug when loading class name form file in custom dataset (#923)
Contributors
- @ShoupingShan made their first contribution in open-mmlab/mmsegmentation#923
- @RockeyCoss made their first contribution in open-mmlab/mmsegmentation#954
- @HarborYuan made their first contribution in open-mmlab/mmsegmentation#992
- @lkm2835 made their first contribution in open-mmlab/mmsegmentation#1003
- @gszh made their first contribution in open-mmlab/mmsegmentation#428
- @VVsssssk
- @MengzhangLI
- @Junjun2016
Highlights
- Support three real-time segmentation models (ICNet #884, BiSeNetV1 #851, and BiSeNetV2 #804)
- Support one efficient segmentation model (FastFCN #885)
- Support one efficient non-local/self-attention based segmentation model (ISANet #70)
- Support COCO-Stuff 10k and 164k datasets (#625)
- Support evaluate concated dataset separately (#833)
- Support loading GT for evaluation from multi-file backend (#867)
New Features
- Support three real-time segmentation models (ICNet #884, BiSeNetV1 #851, and BiSeNetV2 #804)
- Support one efficient segmentation model (FastFCN #885)
- Support one efficient non-local/self-attention based segmentation model (ISANet #70)
- Support COCO-Stuff 10k and 164k datasets (#625)
- Support evaluate concated dataset separately (#833)
Improvements
- Support loading GT for evaluation from multi-file backend (#867)
- Auto-convert SyncBN to BN when training on DP automatly(#772)
- Refactor Swin-Transformer (#800)
Bug Fixes
- Update mmcv installation in dockerfile (#860)
- Fix number of iteration bug when resuming checkpoint in distributed train (#866)
- Fix parsing parse in val_step (#906)
Highlights
- Support SegFormer
- Support DPT
- Support Dark Zurich and Nighttime Driving datasets
- Support progressive evaluation
New Features
- Support SegFormer (#599)
- Support DPT (#605)
- Support Dark Zurich and Nighttime Driving datasets (#815)
- Support progressive evaluation (#709)
Improvements
- Add multiscale_output interface and unittests for HRNet (#830)
- Support inherit cityscapes dataset (#750)
- Fix some typos in README.md (#824)
- Delete convert function and add instruction to ViT/Swin README.md (#791)
- Add vit/swin/mit convert weight scripts (#783)
- Add copyright files (#796)
Bug Fixes
- Fix invalid checkpoint link in inference_demo.ipynb (#814)
- Ensure that items in dataset have the same order across multi machine (#780)
- Fix the log error (#766)
Highlights
- Support PyTorch 1.9
- Support SegFormer backbone MiT
- Support md2yml pre-commit hook
- Support frozen stage for HRNet
New Features
- Support SegFormer backbone MiT (#594)
- Support md2yml pre-commit hook (#732)
- Support mim (#717)
- Add mmseg2torchserve tool (#552)
Improvements
- Support hrnet frozen stage (#743)
- Add template of reimplementation questions (#741)
- Output pdf and epub formats for readthedocs (#742)
- Refine the docstring of ResNet (#723)
- Replace interpolate with resize (#731)
- Update resource limit (#700)
- Update config.md (#678)
Bug Fixes
- Fix ATTENTION registry (#729)
- Fix analyze log script (#716)
- Fix doc api display (#725)
- Fix patch_embed and pos_embed mismatch error (#685)
- Fix efficient test for multi-node (#707)
- Fix init_cfg in resnet backbone (#697)
- Fix efficient test bug (#702)
- Fix url error in config docs (#680)
- Fix mmcv installation (#676)
- Fix torch version (#670)
Contributors
@sshuair @xiexinch @Junjun2016 @mmeendez8 @xvjiarui @sennnnn @puhsu @BIGWangYuDong @keke1u @daavoo
Highlights
- Support ViT, SETR, and Swin-Transformer
- Add Chinese documentation
- Unified parameter initialization
Bug Fixes
- Fix typo and links (#608)
- Fix Dockerfile (#607)
- Fix ViT init (#609)
- Fix mmcv version compatible table (#658)
- Fix model links of DMNEt (#660)
New Features
- Support loading DeiT weights (#538)
- Support SETR (#531, #635)
- Add config and models for ViT backbone with UperHead (#520, #635)
- Support Swin-Transformer (#511)
- Add higher accuracy FastSCNN (#606)
- Add Chinese documentation (#666)
Improvements
- Unified parameter initialization (#567)
- Separate CUDA and CPU in github action CI (#602)
- Support persistent dataloader worker (#646)
- Update meta file fields (#661, #664)
Highlights
- Support ONNX to TensorRT
- Support MIM
Bug Fixes
New Features
- Support loading DeiT weights (#538)
- Support ONNX to TensorRT (#542)
- Support output results for ADE20k (#544)
- Support MIM (#549)
Improvements
- Add option for ViT output shape (#530)
- Infer batch size using len(result) (#532)
- Add compatible table between MMSeg and MMCV (#558)
Highlights
- Support Pascal Context Class-59 dataset.
- Support Visual Transformer Backbone.
- Support mFscore metric.
Bug Fixes
- Fixed Colaboratory tutorial (#451)
- Fixed mIoU calculation range (#471)
- Fixed sem_fpn, unet README.md (#492)
- Fixed
num_classes
in FCN for Pascal Context 60-class dataset (#488) - Fixed FP16 inference (#497)
New Features
- Support dynamic export and visualize to pytorch2onnx (#463)
- Support export to torchscript (#469, #499)
- Support Pascal Context Class-59 dataset (#459)
- Support Visual Transformer backbone (#465)
- Support UpSample Neck (#512)
- Support mFscore metric (#509)
Improvements
- Add more CI for PyTorch (#460)
- Add print model graph args for tools/print_config.py (#451)
- Add cfg links in modelzoo README.md (#468)
- Add BaseSegmentor import to segmentors/init.py (#495)
- Add MMOCR, MMGeneration links (#501, #506)
- Add Chinese QR code (#506)
- Use MMCV MODEL_REGISTRY (#515)
- Add ONNX testing tools (#498)
- Replace data_dict calling 'img' key to support MMDet3D (#514)
- Support reading class_weight from file in loss function (#513)
- Make tags as comment (#505)
- Use MMCV EvalHook (#438)
Highlights
- Support FCN-Dilate 6 model.
- Support Dice Loss.
Bug Fixes
- Fixed PhotoMetricDistortion Doc (#388)
- Fixed install scripts (#399)
- Fixed Dice Loss multi-class (#417)
New Features
- Support Dice Loss (#396)
- Add plot logs tool (#426)
- Add opacity option to show_result (#425)
- Speed up mIoU metric (#430)
Improvements
- Refactor unittest file structure (#440)
- Fix typos in the repo (#449)
- Include class-level metrics in the log (#445)
Highlights
- Support memory efficient test, add more UNet models.
Bug Fixes
New Features
Improvements
- Move train_cfg/test_cfg inside model (#341)
Highlights
- Support MobileNetV3, DMNet, APCNet. Add models of ResNet18V1b, ResNet18V1c, ResNet50V1b.
Bug Fixes
New Features
- Add ResNet18V1b, ResNet18V1c, ResNet50V1b, ResNet101V1b models (#316)
- Support MobileNetV3 (#268)
- Add 4 retinal vessel segmentation benchmark (#315)
- Support DMNet (#313)
- Support APCNet (#299)
Improvements
- Refactor Documentation page (#311)
- Support resize data augmentation according to original image size (#291)
Highlights
- Support 4 medical dataset, UNet and CGNet.
New Features
- Support RandomRotate transform (#215, #260)
- Support RGB2Gray transform (#227)
- Support Rerange transform (#228)
- Support ignore_index for BCE loss (#210)
- Add modelzoo statistics (#263)
- Support Dice evaluation metric (#225)
- Support Adjust Gamma transform (#232)
- Support CLAHE transform (#229)
Bug Fixes
- Fixed detail API link (#267)
Highlights
- Support 4 medical dataset, UNet and CGNet.
New Features
- Support customize runner (#118)
- Support UNet (#161)
- Support CHASE_DB1, DRIVE, STARE, HRD (#203)
- Support CGNet (#223)
Highlights
- Support Pascal Context dataset and customizing class dataset.
Bug Fixes
- Fixed CPU inference (#153)
New Features
- Add DeepLab OS16 models (#154)
- Support Pascal Context dataset (#133)
- Support customizing dataset classes (#71)
- Support customizing dataset palette (#157)
Improvements
- Support 4D tensor output in ONNX (#150)
- Remove redundancies in ONNX export (#160)
- Migrate to MMCV DepthwiseSeparableConv (#158)
- Migrate to MMCV collect_env (#137)
- Use img_prefix and seg_prefix for loading (#153)
Highlights
- Support new methods i.e. MobileNetV2, EMANet, DNL, PointRend, Semantic FPN, Fast-SCNN, ResNeSt.
Bug Fixes
- Fixed sliding inference ONNX export (#90)
New Features
- Support MobileNet v2 (#86)
- Support EMANet (#34)
- Support DNL (#37)
- Support PointRend (#109)
- Support Semantic FPN (#94)
- Support Fast-SCNN (#58)
- Support ResNeSt backbone (#47)
- Support ONNX export (experimental) (#12)
Improvements
- Support Upsample in ONNX (#100)
- Support Windows install (experimental) (#75)
- Add more OCRNet results (#20)
- Add PyTorch 1.6 CI (#64)
- Get version and githash automatically (#55)
Highlights
- Support FP16 and more generalized OHEM
Bug Fixes
- Fixed Pascal VOC conversion script (#19)
- Fixed OHEM weight assign bug (#54)
- Fixed palette type when palette is not given (#27)
New Features
- Support FP16 (#21)
- Generalized OHEM (#54)
Improvements
- Add load-from flag (#33)
- Fixed training tricks doc about different learning rates of model (#26)