Multi-Objective Matrix Normalization for Fine-grained Visual Recognition

30 Mar 2020Shaobo MinHantao YaoHongtao XieZheng-Jun ZhaYongdong Zhang

Bilinear pooling achieves great success in fine-grained visual recognition (FGVC). Recent methods have shown that the matrix power normalization can stabilize the second-order information in bilinear features, but some problems, e.g., redundant information and over-fitting, remain to be resolved... (read more)

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