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المنصة
الرئيسية
SOTA
فصل التصنيف البشري
Human Instance Segmentation On Ochuman
Human Instance Segmentation On Ochuman
المقاييس
AP
النتائج
نتائج أداء النماذج المختلفة على هذا المعيار القياسي
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اسم النموذج
AP
Paper Title
HQNet (ViT-L)
38.8
You Only Learn One Query: Learning Unified Human Query for Single-Stage Multi-Person Multi-Task Human-Centric Perception
BBox-Mask-Pose 2x
32.4
Detection, Pose Estimation and Segmentation for Multiple Bodies: Closing the Virtuous Circle
Crowd-SAM (ViT-L)
31.4
Crowd-SAM: SAM as a Smart Annotator for Object Detection in Crowded Scenes
HQNet (ResNet-50)
31.1
You Only Learn One Query: Learning Unified Human Query for Single-Stage Multi-Person Multi-Task Human-Centric Perception
BlendMask + CIS
29.8
Real-time Human-Centric Segmentation for Complex Video Scenes
Mask2Former + Occlusion C&P
28.3
Humans need not label more humans: Occlusion Copy & Paste for Occluded Human Instance Segmentation
CondInst + CIS
28.1
Real-time Human-Centric Segmentation for Complex Video Scenes
Mask2Former
27.8
Object-Centric Multi-Task Learning for Human Instances
HCQNet
27.3
Object-Centric Multi-Task Learning for Human Instances
ExPoSeg
26.8
PoSeg: Pose-Aware Refinement Network for Human Instance Segmentation
RTMDet-ins-l
26.5
Detection, Pose Estimation and Segmentation for Multiple Bodies: Closing the Virtuous Circle
JoPoSeg
26.4
PoSeg: Pose-Aware Refinement Network for Human Instance Segmentation
BaseNet-DPS
25.5
Object-Centric Multi-Task Learning for Human Instances
Pose2Seg
23.8
Pose2Seg: Detection Free Human Instance Segmentation
PolarMask + CIS
23.4
Real-time Human-Centric Segmentation for Complex Video Scenes
ResNet-101-FPN + TTG v1
22.42
Test-time Adaptation vs. Training-time Generalization: A Case Study in Human Instance Segmentation using Keypoints Estimation
BCNet
20.6
Occlusion-Aware Instance Segmentation via BiLayer Network Architectures
CaSe
18.0
Count- and Similarity-aware R-CNN for Pedestrian Detection
Mask RCNN
16.9
Count- and Similarity-aware R-CNN for Pedestrian Detection
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