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题目/Title:STAR: An STGCN ARchitecture for Skeleton-Based Human Action Recognition

作者/Author:
                        Pixi Kang, Xiangyu Li

期刊/Journal:IEEE Transactions on Circuits and Systems I: Regular Papers

年份/Issue Date:2023Mar.

卷(期)及页码/Volume(No.)&pages:Vol.70, No.6, pp.2370-2383

摘要/Abstract:

Skeleton-based human action cognition (HAR) has drawn increasing attention recently. As an emerging approach for skeleton-based HAR tasks, Spatial-Temporal Graph Convolution Network (STGCN) achieves remarkable performance by fully exploiting the skeleton topology information via graph convolution. Unfortunately, existing GCN accelerators lose efficiency when processing STGCN models due to two limitations. (1) At the dataflow level, the hardware parallelism of GCN accelerators cannot match the computation parallelism of STGCN models, leading to computing resource under-utilization. (2) At the computation level, GCN accelerators fail to exploit the inherent temporal redundancy in STGCN models. To overcome the limitations, this paper proposes STAR, an STGCN architecture for skeleton-based human action recognition. STAR is designed based on the characteristics of different computation phases in STGCN. For limitation (1), a spatial-temporal dimension consistent (STDC) dataflow is proposed to fully exploit the data reuse opportunities in all the different dimensions of STGCN. For limitation (2), we propose a node-wise exponent sharing scheme and a temporal-structured redundancy elimination mechanism, to exploit the inherent temporal redundancy specially introduced by STGCN.

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