Recognizing human actions based on Sparse Coding with Non-negative and Locality constraints

Yuanbo Chen, Yanyun Zhao, A. Cai
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引用次数: 2

Abstract

In this paper, Sparse Coding with Non-negative and Locality constraints (SCNL) is proposed to generate discriminative feature descriptions for human action recognition. The non-negative constraint ensures that every data sample is in the convex hull of its neighbors. The locality constraint makes a data sample only represented by its related neighbor atoms. The sparsity constraint confines the dictionary atoms involved in the sample representation as fewer as possible. The SCNL model can better capture the global subspace structures of data than classical sparse coding, and are more robust to noise compared to locality-constrained linear coding. Extensive experiments testify the significant advantages of the proposed SCNL model through evaluations on three remarkable human action datasets.
基于非负约束和局部性约束的稀疏编码人类行为识别
本文提出了基于非负局域约束的稀疏编码(SCNL)来生成判别特征描述,用于人体动作识别。非负约束确保每个数据样本都在其邻居的凸包中。局部性约束使得数据样本仅由其相关的相邻原子表示。稀疏性约束将样本表示中涉及的字典原子限制得尽可能少。与传统的稀疏编码相比,SCNL模型能更好地捕获数据的全局子空间结构,与位置约束的线性编码相比,SCNL模型对噪声的鲁棒性更强。通过对三个显著的人类动作数据集的评估,大量的实验证明了所提出的SCNL模型的显著优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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