Recently, several deep learning models have been proposed for 3D human pose estimation. Nevertheless, most of these approaches only focus on the single-person case or estimate 3D pose of a few people at high resolution. Furthermore, many applications such as autonomous driving or crowd analysis require pose estimation of a large number of people possibly at low-resolution. In this work, we present PandaNet (Pose estimAtioN and Dectection Anchor-based Network), a new single-shot, anchor-based and multi-person 3D pose estimation approach. The proposed model performs bounding box detection and, for each detected person, 2D and 3D pose regression into a single forward pass. It does not need any post-processing to regroup joints since the network predicts a full 3D pose for each bounding box and allows the pose estimation of a possibly large number of people at low resolution. To manage people overlapping, we introduce a Pose-Aware Anchor Selection strategy. Moreover, as imbalance exists between different people sizes in the image, and joints coordinates have different uncertainties depending on these sizes, we propose a method to automatically optimize weights associated to different people scales and joints for efficient training. PandaNet surpasses previous single-shot methods on several challenging datasets: a multi-person urban virtual but very realistic dataset (JTA Dataset), and two real world 3D multi-person datasets (CMU Panoptic and MuPoTS-3D).


翻译:最近,为3D人构成的估算提出了几个深层次学习模型。然而,大多数这些方法仅侧重于单人案例,或估算少数人高分辨率的3D构成。此外,自主驱动或人群分析等许多应用软件需要估算大量可能低分辨率的人。在这项工作中,我们介绍了PandaNet(Pose spestmAtioN 和 Dectectction Anchor-Net),一个新的单发、基于锁定的和多人3D 构成的估算方法。拟议的模型对每个被检测到的人进行约束箱检测,对每个被检测到的人来说,2D和3D 将回归到一个前方通道。此外,它不需要任何后处理来重组联合,因为网络预测每个捆绑框的完全为3D,并允许对可能大量低分辨率的人进行估算。为了管理人们的重叠,我们引入了Pose-Aware Anor选择战略。此外,由于图像中不同的人规模之间存在着不平衡,而联合协调的不确定性也不同,取决于这些大小,我们提出了一种自动地超重数字,我们提出了一种方法。

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