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FrequentNet: A Novel Interpretable Deep Learning Model for Image Classification

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 نشر من قبل Liao Zhu
 تاريخ النشر 2020
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This paper has proposed a new baseline deep learning model of more benefits for image classification. Different from the convolutional neural network(CNN) practice where filters are trained by back propagation to represent different patterns of an image, we are inspired by a method called PCANet in PCANet: A Simple Deep Learning Baseline for Image Classification? to choose filter vectors from basis vectors in frequency domain like Fourier coefficients or wavelets without back propagation. Researchers have demonstrated that those basis in frequency domain can usually provide physical insights, which adds to the interpretability of the model by analyzing the frequencies selected. Besides, the training process will also be more time efficient, mathematically clear and interpretable compared with the black-box training process of CNN.

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