Abstract:Aiming at the problems of high noise and color distortion in Retinex-Net algorithm, a low-light image enhancement algorithm based on improved Retinex-Net is proposed grounded on the decomposition-enhancement framework of Retinex-Net. Firstly, a decomposition network composed of shallow upper and lower sampling structure is designed to decompose the input image into reflection component and illumination component. In this process, the denoising loss is added to suppress the noise generated during the decomposition process. Secondly, the attention mechanism module and color loss are introduced into the enhancement network to enhance the brightness of the illumination component and meanwhile reduce the image color distortion. Finally, the reflection component and the enhanced illumination component are fused into the normal illumination image to output. The experimental results show that the proposed algorithm improves the image brightness effectively with the noise of enhanced image reduced.
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