Beyond Covariance: SICE and Kernel Based Visual Feature Representation

被引:0
作者
Jianjia Zhang
Lei Wang
Luping Zhou
Wanqing Li
机构
[1] Sun Yat-sen University,School of Biomedical Engineering
[2] University of Technology Sydney,School of Computer Science
[3] University of Wollongong,School of Computing and Information Technology
[4] The University of Sydney,School of Electrical and Information Engineering
来源
International Journal of Computer Vision | 2021年 / 129卷
关键词
Covariance matrix; Structure sparsity; Sparse inverse covariance estimate; Kernel matrix; Visual representation;
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中图分类号
学科分类号
摘要
The past several years have witnessed increasing research interest on covariance-based feature representation. Originally proposed as a region descriptor, it has now been used as a general representation in various recognition tasks, demonstrating promising performance. However, covariance matrix has some inherent shortcomings such as singularity in the case of small sample, limited capability in modeling complicated feature relationship, and a single, fixed form of representation. To achieve better recognition performance, this paper argues that more capable and flexible symmetric positive definite (SPD)-matrix-based representation shall be explored, and this is attempted in this work by exploiting prior knowledge of data and nonlinear representation. Specifically, to better deal with the issues of small number of feature vectors and high feature dimensionality, we propose to exploit the structure sparsity of visual features and exemplify sparse inverse covariance estimate as a new feature representation. Furthermore, to effectively model complicated feature relationship, we propose to directly compute kernel matrix over feature dimensions, leading to a robust, flexible and open framework of SPD-matrix-based representation. Through theoretical analysis and experimental study, the proposed two representations well demonstrate their advantages over the covariance counterpart in skeletal human action recognition, image set classification and object classification tasks.
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页码:300 / 320
页数:20
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