2023
DOI: 10.3390/electronics12183745
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A Bi-Directional Two-Dimensional Deep Subspace Learning Network with Sparse Representation for Object Recognition

Xiaoxue Li,
Weijia Feng,
Xiaofeng Wang
et al.

Abstract: A principal component analysis network (PCANet), as one of the representative deep subspace learning networks, utilizes principal component analysis (PCA) to learn filters that represent the dominant structural features of objects. However, the filters used in PCANet are linear combinations of all the original variables and contain complex and redundant principal components, which hinders the interpretability of the results. To address this problem, we introduce sparse constraints into a subspace learning netw… Show more

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