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A Structure Constraint Matrix Factorization Framework for Human Behavior Segmentation

Gao, Hongbo; Lv, Chen; Zhang, Tong*; Zhao, Hongfei; Jiang, Lei; Zhou, Junjie; Liu, Yuchao; Huang, Yi; Han, Chao
Science Citation Index Expanded
南京大学; 南阳理工学院; 清华大学; 浙江大学

摘要

This article presents a structure constraint matrix factorization framework for different behavior segmentation of the human behavior sequential data. This framework is based on the structural information of the behavior continuity and the high similarity between neighboring frames. Due to the high similarity and high dimensionality of human behavior data, the high-precision segmentation of human behavior is hard to achieve from the perspective of application and academia. By making the behavior continuity hypothesis, first, the effective constraint regular terms are constructed. Subsequently, the clustering framework based on constrained non-negative matrix factorization is established. Finally, the segmentation result can be obtained by using the spectral clustering and graph segmentation algorithm. For illustration, the proposed framework is applied to the Weiz dataset, Keck dataset, mo_86 dataset, and mo_86_9 dataset. Empirical experiments on several public human behavior datasets demonstrate that the structure constraint matrix factorization framework can automatically segment human behavior sequences. Compared to the classical algorithm, the proposed framework can ensure consistent segmentation of sequential points within behavior actions and provide better performance in accuracy.

关键词

Clustering algorithms Image segmentation Principal component analysis Motion segmentation Optimization Matrix decomposition Image recognition Computer vision human behavior segmentation matrix factorization spectral clustering structure constraint