Ske2Grid:用于动作识别的骨架到网格表示学习

Dongqi Cai, Yangyuxuan Kang, Anbang Yao, Yurong Chen
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引用次数: 0

摘要

本文提出了Ske2Grid,一种新的表示学习框架,用于改进基于骨架的动作识别。在Ske2Grid中,我们对一种新的人体骨骼网格表示定义了一个规则的卷积操作,该网格表示是一个紧凑的图像状网格补丁,通过三种新颖的设计构建和学习。具体来说,我们提出了一种图节点索引变换(GIT),通过将骨架图中的节点逐一分配给所需的网格单元来构建规则的网格补丁。为了保证GIT是一个双射,并丰富网格表示的表达性,学习了上采样变换(UPT)来插值骨架图节点,以充分填充网格补丁。为了解决单步UPT过于侵略性的问题,进一步利用网格块随着空间大小的增加而呈现的能力,提出了一种渐进学习策略(PLS),该策略将UPT解耦成多步,并通过渐进学习的紧凑级联设计将它们对齐到多个成对的git。我们在流行的图卷积网络上构建网络,并在六种主流的基于骨架的动作识别数据集上进行了实验。实验表明,我们的Ske2Grid在不同的基准设置下明显优于现有的基于gcn的解决方案,没有花哨的东西。代码和模型可在https://github.com/OSVAI/Ske2Grid上获得
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Ske2Grid: Skeleton-to-Grid Representation Learning for Action Recognition
This paper presents Ske2Grid, a new representation learning framework for improved skeleton-based action recognition. In Ske2Grid, we define a regular convolution operation upon a novel grid representation of human skeleton, which is a compact image-like grid patch constructed and learned through three novel designs. Specifically, we propose a graph-node index transform (GIT) to construct a regular grid patch through assigning the nodes in the skeleton graph one by one to the desired grid cells. To ensure that GIT is a bijection and enrich the expressiveness of the grid representation, an up-sampling transform (UPT) is learned to interpolate the skeleton graph nodes for filling the grid patch to the full. To resolve the problem when the one-step UPT is aggressive and further exploit the representation capability of the grid patch with increasing spatial size, a progressive learning strategy (PLS) is proposed which decouples the UPT into multiple steps and aligns them to multiple paired GITs through a compact cascaded design learned progressively. We construct networks upon prevailing graph convolution networks and conduct experiments on six mainstream skeleton-based action recognition datasets. Experiments show that our Ske2Grid significantly outperforms existing GCN-based solutions under different benchmark settings, without bells and whistles. Code and models are available at https://github.com/OSVAI/Ske2Grid
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