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Reweighted sparse representation with residual compensation for 3D human pose estimation from a single RGB image

机译:带残差补偿的加权稀疏表示,可从单个RGB图像进行3D人体姿势估计

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3D human pose estimation from 2D joints of an image is a worthwhile and challenging research topic. Since a specific 2D pose could be projected from various 3D poses, the ambiguity becomes a difficult obstacle when recovering 3D pose from 2D. Many supervised learning solutions have been proposed in recent years, however, most of them require an abundant of well-annotated training samples to get satisfied estimation performance. In this paper, an unsupervised approach that built upon sparse representation (SR) is presented and its two enhancement schemes are provided. As the first scheme, the reweighting one improves the sparsity of the SR model which leads to a more accurate solution. Furthermore, based on the resulting minimization residual of the loss function in 2D, the discrepancy between the estimated 3D pose and the target 3D pose is used to adjust the estimated 3D pose to reach a better accuracy. Comprehensive experiments have been conducted on four well-recognized benchmarks for evaluation. Significant and consistent improvements over existing SR models are observed in our experiments. Furthermore, the proposed approach even outperforms many supervised learning works. (C) 2019 Elsevier B.V. All rights reserved.
机译:从图像的2D关节进行3D人体姿势估计是一个值得且具有挑战性的研究主题。由于可以从各种3D姿势中投影特定的2D姿势,因此从2D恢复3D姿势时,歧义性成为困难的障碍。近年来,已经提出了许多有监督的学习解决方案,但是,其中大多数都需要大量经过良好注释的训练样本才能获得令人满意的估计性能。本文提出了一种基于稀疏表示(SR)的无监督方法,并提供了其两种增强方案。作为第一种方案,重新加权可以提高SR模型的稀疏性,从而导致更准确的解决方案。此外,基于所得的2D损失函数的最小化残差,估算的3D姿态与目标3D姿态之间的差异用于调整估算的3D姿态以达到更好的精度。在四个公认的基准上进行了全面的评估实验。在我们的实验中,我们发现与现有的SR模型相比,已有明显且一致的改进。此外,所提出的方法甚至胜过许多有监督的学习工作。 (C)2019 Elsevier B.V.保留所有权利。

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