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3 months ago

AWR: Adaptive Weighting Regression for 3D Hand Pose Estimation

Weiting Huang Pengfei Ren Jingyu Wang Qi Qi Haifeng Sun

AWR: Adaptive Weighting Regression for 3D Hand Pose Estimation

Abstract

In this paper, we propose an adaptive weighting regression (AWR) method to leverage the advantages of both detection-based and regression-based methods. Hand joint coordinates are estimated as discrete integration of all pixels in dense representation, guided by adaptive weight maps. This learnable aggregation process introduces both dense and joint supervision that allows end-to-end training and brings adaptability to weight maps, making the network more accurate and robust. Comprehensive exploration experiments are conducted to validate the effectiveness and generality of AWR under various experimental settings, especially its usefulness for different types of dense representation and input modality. Our method outperforms other state-of-the-art methods on four publicly available datasets, including NYU, ICVL, MSRA and HANDS 2017 dataset.

Code Repositories

Elody-07/AWR-Adaptive-Weighting-Regression
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
hand-pose-estimation-on-hands-2017AWR
Average 3D Error: 7.48
hand-pose-estimation-on-hands-2019AWR
Average 3D Error: 13.76
hand-pose-estimation-on-icvl-handsAWR
Average 3D Error: 5.98
hand-pose-estimation-on-msra-handsAWR
Average 3D Error: 7.15
hand-pose-estimation-on-nyu-handsAWR
Average 3D Error: 7.48

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AWR: Adaptive Weighting Regression for 3D Hand Pose Estimation | Papers | HyperAI