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4 months ago

High-Resolution Representations for Labeling Pixels and Regions

Ke Sun; Yang Zhao; Borui Jiang; Tianheng Cheng; Bin Xiao; Dong Liu; Yadong Mu; Xinggang Wang; Wenyu Liu; Jingdong Wang

High-Resolution Representations for Labeling Pixels and Regions

Abstract

High-resolution representation learning plays an essential role in many vision problems, e.g., pose estimation and semantic segmentation. The high-resolution network (HRNet)~\cite{SunXLW19}, recently developed for human pose estimation, maintains high-resolution representations through the whole process by connecting high-to-low resolution convolutions in \emph{parallel} and produces strong high-resolution representations by repeatedly conducting fusions across parallel convolutions. In this paper, we conduct a further study on high-resolution representations by introducing a simple yet effective modification and apply it to a wide range of vision tasks. We augment the high-resolution representation by aggregating the (upsampled) representations from all the parallel convolutions rather than only the representation from the high-resolution convolution as done in~\cite{SunXLW19}. This simple modification leads to stronger representations, evidenced by superior results. We show top results in semantic segmentation on Cityscapes, LIP, and PASCAL Context, and facial landmark detection on AFLW, COFW, $300$W, and WFLW. In addition, we build a multi-level representation from the high-resolution representation and apply it to the Faster R-CNN object detection framework and the extended frameworks. The proposed approach achieves superior results to existing single-model networks on COCO object detection. The code and models have been publicly available at \url{https://github.com/HRNet}.

Code Repositories

ducongju/HRNet
pytorch
Mentioned in GitHub
wsjzha/deep-high-resolution-net.pytorch
pytorch
Mentioned in GitHub
laowang666888/HRNET
pytorch
Mentioned in GitHub
HRNet/HRNet-Human-Pose-Estimation
pytorch
Mentioned in GitHub
gox-ai/hrnet-pose-api
pytorch
Mentioned in GitHub
mseg-dataset/mseg-semantic
pytorch
Mentioned in GitHub
HRNet/HRNet-Object-Detection
pytorch
Mentioned in GitHub
mdt48/semantic-segmentation-pytorch
pytorch
Mentioned in GitHub
tejaswigowda/semseg-pytorch
pytorch
Mentioned in GitHub
kdhingra307/temp
pytorch
Mentioned in GitHub
Jarr0d/Human-Parsing-Network
pytorch
Mentioned in GitHub
Burf/HRNetV2-OCR-Tensorflow2
tf
Mentioned in GitHub
visionNoob/hrnet_pytorch
pytorch
Mentioned in GitHub
HRNet/HRNet-Semantic-Segmentation
pytorch
Mentioned in GitHub
yuanyuanli85/tf-hrnet
tf
Mentioned in GitHub
abhi1kumar/hrnet_pose_single_gpu
pytorch
Mentioned in GitHub
strivebo/image_segmentation_dl
tf
Mentioned in GitHub
sdll/hrnet-pose-estimation
pytorch
Mentioned in GitHub
Rosie-Brigham/sesmeg
pytorch
Mentioned in GitHub
HRNet/HRNet-MaskRCNN-Benchmark
pytorch
Mentioned in GitHub
HRNet/HRNet-Facial-Landmark-Detection
pytorch
Mentioned in GitHub
leoxiaobin/deep-high-resolution-net.pytorch
Official
pytorch
Mentioned in GitHub
anshky/HR-NET
pytorch
Mentioned in GitHub
163GitHub/AI
pytorch
Mentioned in GitHub
liuch37/semantic-segmentation
pytorch
Mentioned in GitHub
fenglian425/Agriculture_AI
pytorch
Mentioned in GitHub
HRNet/HRNet-FCOS
pytorch
Mentioned in GitHub
HRNet/HRNet-Image-Classification
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
face-alignment-on-300wHR-Net
NME_inter-ocular (%, Challenge): 5.15
NME_inter-ocular (%, Common): 2.87
NME_inter-ocular (%, Full): 3.32
face-alignment-on-aflw-19HR-Net
NME_diag (%, Frontal): 1.46
NME_diag (%, Full): 1.57
face-alignment-on-cofwHRNet
NME (inter-ocular): 3.45%
semantic-segmentation-on-ade20kHRNetV2
Validation mIoU: 43.2
semantic-segmentation-on-ade20k-valHRNetV2 (HRNetV2-W48)
mIoU: 42.99
semantic-segmentation-on-cityscapesHRNet (HRNetV2-W48)
Mean IoU (class): 81.6%
semantic-segmentation-on-lip-valHRNetV2 (HRNetV2-W48)
mIoU: 55.90%

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High-Resolution Representations for Labeling Pixels and Regions | Papers | HyperAI