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Non-negative Matrix Semi-tensor Factorization for Image Feature Extraction and Clustering

机译:用于图像特征提取和聚类的非负矩阵半张量因子分解

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Non-negative Matrix Factorization (NMF) has been frequently applied to image feature extraction and clustering. Especially in image clustering tasks, it can achieve the similar or better performance than most of the matrix factorization algorithms due to its parts-based representations in the brain. However, the features extracted by NMF are not sparse and localized enough and the error of factorization is not small enough. Semi-tensor product of matrices (STP) is a novel operation of matrix multiplication, it is a generalization of the conventional matrix product for allowing the dimensions of factor matrices to be unequal. STP can manage the data hierarchically and the inverse process of STP can separate the data hierarchically. Based on this character of STP, we propose the Non-Negative Matrix Semi-Tensor Factorization (NMSTF). In this algorithm, we use the inverse process of Semi-Tensor Product of matrices for non-negative matrix factorization. This algorithm effectively optimizes the above two problems in NMF. While achieving similar even better performance on image clustering tasks, the size of features extracted by STNMF is at least 50 % smaller than the ones' extracted by NMF and the error of factorization reduces 30 % in average.
机译:非负矩阵分解(NMF)已经常应用于图像特征提取和聚类。尤其是在图像聚类任务中,由于其在大脑中的基于部分的表示,因此与大多数矩阵分解算法相比,它可以实现相似或更好的性能。但是,NMF提取的特征不够稀疏和局部化,分解的误差还不够小。矩阵的半张量积(STP)是矩阵乘法的一种新颖运算,它是常规矩阵乘积的泛化,用于允许因子矩阵的尺寸不相等。 STP可以分层管理数据,而STP的逆过程可以分层分离数据。基于STP的这一特性,我们提出了非负矩阵半张量因子分解(NMSTF)。在该算法中,我们使用矩阵的半张量积的逆过程进行非负矩阵分解。该算法有效地优化了NMF中的上述两个问题。在图像聚类任务上实现相似甚至更好的性能时,由STNMF提取的特征的大小至少比由NMF提取的特征小50%,并且因式分解的错误平均减少了30%。

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