基于手点网的自中心RGB-D图像三维手部姿态估计

Van-Hung Le, Van-Nam Hoang, Hai Vu, Thi-Lan Le, Thanh-Hai Tran, V. Vu
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引用次数: 1

摘要

近年来,在第一人称视觉(First-Person Vision, FPV)领域,理解手和物体的操作是一个活跃的话题。在这项研究中,我们提出了一个初步的研究估计三维手关节使用最先进的神经网络。我们首先提出了一种预处理步骤,即从聚类背景中分离手部区域。我们部署了基于HandPointNet (HPN)的三维手部关节估算管道。HPN展示了最先进的手姿估计性能与深度数据。我们在CVAR [1], UCI-EGO[2]数据集上部署了手部点网(HPN)的微调方案,用于3D手部姿态估计。在实验结果中,我们使用预处理步骤对估计结果进行评估,以验证所提出方法的有效性。结果表明,与MSRA、NYU、ICVL等不同数据集上的全手数据相比,三维联合估计误差减小。特别是,我们测量丢失的估计误差,模糊的数据。实验结果表明,未遮挡和遮挡情况下的结果仍存在较大差距。在这一初步研究的基础上,我们倾向于更深入地研究解决物体遮挡或自身遮挡情况的技术,这些情况使得当前网络难以定位手部隐藏的关节/部位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hand PointNet-based 3D Hand Pose Estimation in Egocentric RGB-D Images
Recently, understanding hand and object manipulation is an active topic in First-Person Vision (FPV) community. In this study, we present an initial study on estimating 3-D hand joints using the state-of-the-art neuronal network. We firstly propose a pre-processing step that is to separate hand regions from clustered background. We deploy the completed pipeline for estimating 3-D hand joints based on HandPointNet (HPN). HPN demonstrates the state-of-the-art hand pose estimation performances with depth data. We deploy a fine-tuning scheme to Hand PointNet (HPN) on the CVAR [1], UCI-EGO [2] datasets for 3D hand pose estimation. In the experimental results, we evaluate the estimated results using the pre-processing step to see the effectiveness of the proposed method. The results show that 3-D joint estimation errors are decreased comparing with the full hand data on different datasets as MSRA, NYU, ICVL. Particularly, we measure the estimation errors of missing, obscured data. The experimental results infer that, it is still existing a big gap between the results of un-occluded and occluded cases. Based on this initial study, we tend to investigate more deeply the techniques addressing the object occlusions or self-occlusions cases that make the current networks hard to localize hidden joints/parts of the hand.
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