Chinese Journal of Liquid Crystals and Displays, Volume. 36, Issue 11, 1463(2021)
Attentive residual dense network of visual attention mechanism for weakly illuminated image enhancement
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DENG Zhen, WANG Yi-bin, LIU Li-bo. Attentive residual dense network of visual attention mechanism for weakly illuminated image enhancement[J]. Chinese Journal of Liquid Crystals and Displays, 2021, 36(11): 1463
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Received: Apr. 13, 2021
Accepted: --
Published Online: Dec. 1, 2021
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