A NEW DENOISING PREPROCESSING APPROACH FOR IMAGE RECOGNITION BY IMPROVED HOPFIELD NEURAL NETWORK, 383-391.

Ying Cui,∗ Shixin Li,∗ Decai Qu,∗ Xiaoyu Fan,∗ and Hongchao Lu∗∗

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