RefiNet: 3D Human Pose Refinement with Depth Maps

Andrea D'Eusanio, S. Pini, G. Borghi, R. Vezzani, R. Cucchiara
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引用次数: 5

Abstract

Human Pose Estimation is a fundamental task for many applications in the Computer Vision community and it has been widely investigated in the 2D domain, i.e. intensity images. Therefore, most of the available methods for this task are mainly based on 2D Convolutional Neural Networks and huge manually-annotated RGB datasets, achieving stunning results. In this paper, we propose RefiNet, a multi-stage framework that regresses an extremely-precise 3D human pose estimation from a given 2D pose and a depth map. The framework consists of three different modules, each one specialized in a particular refinement and data representation, i.e. depth patches, 3D skeleton and point clouds. Moreover, we present a new dataset, called Baracca, acquired with RGB, depth and thermal cameras and specifically created for the automotive context. Experimental results confirm the quality of the refinement procedure that largely improves the human pose estimations of off-the-shelf 2D methods.
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RefiNet: 3D人体姿态细化与深度图
人体姿态估计是计算机视觉领域许多应用的基础任务,在二维领域(即强度图像)中得到了广泛的研究。因此,大多数可用的方法主要是基于2D卷积神经网络和大量手动标注的RGB数据集,取得了惊人的结果。在本文中,我们提出了RefiNet,这是一个多阶段框架,可以从给定的2D姿态和深度图中回归极其精确的3D人体姿态估计。该框架由三个不同的模块组成,每个模块专门用于特定的细化和数据表示,即深度补丁,3D骨架和点云。此外,我们还提供了一个名为Baracca的新数据集,该数据集由RGB、深度和热像仪获得,专门为汽车环境创建。实验结果证实了改进过程的质量,极大地提高了现成的二维方法的人体姿态估计。
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