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HumanGPS: Geodesic PreServing Feature for Dense Human Correspondences

About

In this paper, we address the problem of building dense correspondences between human images under arbitrary camera viewpoints and body poses. Prior art either assumes small motion between frames or relies on local descriptors, which cannot handle large motion or visually ambiguous body parts, e.g., left vs. right hand. In contrast, we propose a deep learning framework that maps each pixel to a feature space, where the feature distances reflect the geodesic distances among pixels as if they were projected onto the surface of a 3D human scan. To this end, we introduce novel loss functions to push features apart according to their geodesic distances on the surface. Without any semantic annotation, the proposed embeddings automatically learn to differentiate visually similar parts and align different subjects into an unified feature space. Extensive experiments show that the learned embeddings can produce accurate correspondences between images with remarkable generalization capabilities on both intra and inter subjects.

Feitong Tan, Danhang Tang, Mingsong Dou, Kaiwen Guo, Rohit Pandey, Cem Keskin, Ruofei Du, Deqing Sun, Sofien Bouaziz, Sean Fanello, Ping Tan, Yinda Zhang• 2021

Related benchmarks

TaskDatasetResultRank
Dense human pose regressionDensePose MSCOCO (test)
Error (5cm Threshold)55.41
16
Dense Correspondence SearchSMPL Intra-Subject (test)
EPE (non-occluded)7.12
8
Dense Correspondence SearchRelightables Intra-Subject (test)
EPE (Non-Occluded)11.24
8
Dense Correspondence SearchRenderPeople Intra-Subject (test)
EPE (Non-Occluded)11.91
8
Dense Correspondence SearchSMPL Inter-Subject (test)
EPE (non-occluded)8.49
8
Dense human correspondencesSMPL (Intra-Subject)
Non-Correspondence Metric2.13
6
Dense human correspondencesRelightables (Intra-Subject)
Non-Correspondence Error Rate2.27
6
Dense human correspondencesRenderPeople Intra-Subject
Non-MPJPE3.95
6
Occlusion DetectionSMPL Intra-Subject (test)
Average Precision94.93
6
Occlusion DetectionThe Relightables Intra-Subject (test)
AP87.67
6
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