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Gait recognition and micro-expression recognition based on maximum margin projection with tensor representation

机译:基于张量表示的最大边缘投影的步态识别和微表情识别

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摘要

We contribute, through this paper, to design a novel algorithm called maximum margin projection with tensor representation (MMPTR). This algorithm is able to recognize gait and micro-expression represented as third-order tensors. Through maximizing the inter-class Laplacian scatter and minimizing the intra-class Laplacian scatter, MMPTR can seek a tensor-to-tensor projection that directly extracts discriminative and geometry-preserving features from the original tensorial data. We show the validity of MMPTR through extensive experiments on the CASIA(B) gait database, TUM GAID gait database, and CASME micro-expression database. The proposed MMPTR generally obtains higher accuracy than MPCA, GTDA as well as state-of-the-art DTSA algorithm. Experimental results included in this paper suggest that MMPTR is especially effective in such tensorial object recognition tasks.
机译:通过本文,我们为设计一种新颖的算法(称为张量表示的最大边距投影)做出了贡献。该算法能够识别以三阶张量表示的步态和微表情。通过最大化类间拉普拉斯散射和最小化类内拉普拉斯散射,MMPTR可以寻求一个张量到张量投影,该投影直接从原始张量数据中提取判别性和几何保留特征。我们通过在CASIA(B)步态数据库,TUM GAID步态数据库和CASME微表达数据库上进行广泛的实验来证明MMPTR的有效性。提出的MMPTR通常比MPCA,GTDA和最新的DTSA算法获得更高的精度。本文包含的实验结果表明,MMPTR在这种张量目标识别任务中特别有效。

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