TRB: A Novel Triplet Representation for Understanding 2D Human Body

Haodong Duan, Kwan-Yee Lin, Sheng Jin, Wentao Liu, C. Qian, Wanli Ouyang
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引用次数: 13

Abstract

Human pose and shape are two important components of 2D human body. However, how to efficiently represent both of them in images is still an open question. In this paper, we propose the Triplet Representation for Body (TRB) --- a compact 2D human body representation, with skeleton keypoints capturing human pose information and contour keypoints containing human shape information. TRB not only preserves the flexibility of skeleton keypoint representation, but also contains rich pose and human shape information. Therefore, it promises broader application areas, such as human shape editing and conditional image generation. We further introduce the challenging problem of TRB estimation, where joint learning of human pose and shape is required. We construct several large-scale TRB estimation datasets, based on the popular 2D pose datasets LSP, MPII and COCO. To effectively solve TRB estimation, we propose a two-branch network (TRB-net) with three novel techniques, namely X-structure (Xs), Directional Convolution (DC) and Pairwise mapping (PM), to enforce multi-level message passing for joint feature learning. We evaluate our proposed TRB-net and several leading approaches on our proposed TRB datasets, and demonstrate the superiority of our method through extensive evaluations.
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TRB:一种用于理解二维人体的新型三重表示
人体姿态和形体是二维人体的两个重要组成部分。然而,如何在图像中有效地表示两者仍然是一个悬而未决的问题。在本文中,我们提出了身体的三重表示(TRB)——一种紧凑的二维人体表示,其中骨架关键点捕获人体姿势信息,轮廓关键点包含人体形状信息。TRB既保留了骨架关键点表示的灵活性,又包含了丰富的姿态和人体形状信息。因此,它具有更广泛的应用领域,如人体形状编辑和条件图像生成。我们进一步介绍了具有挑战性的TRB估计问题,其中需要联合学习人体姿势和形状。基于当前流行的二维姿态数据集LSP、MPII和COCO,我们构建了几个大规模的TRB估计数据集。为了有效地解决TRB估计问题,我们提出了一个两分支网络(TRB-net),采用三种新技术,即x结构(Xs),定向卷积(DC)和成对映射(PM),以强制多级消息传递以进行联合特征学习。我们在我们提出的TRB数据集上评估了我们提出的TRB网络和几种领先的方法,并通过广泛的评估证明了我们方法的优越性。
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