自然图像去噪和亮度增强的深度残差卷积网络

Wenjie Xu, Malrey Lee, Yujia Zhang, Jie You, S. suk, Jae-Young Choi
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引用次数: 1

摘要

由于低光拍摄环境,相机传感器会丢失大量的细节和模糊的边缘。本文提出了一种深度弱光残差卷积网络(LRCNN),该网络利用稀疏编码特征获取真实信号,并自适应调整弱光状态下的图像曝光。LRCNN中的残差连接帮助我们保留了原始图片中更多潜在的细节信息,加快了网络的训练速度。许多现有的图像增强算法只能解决图像问题的一个方面。我们设计了一个可以同时处理多个图像处理问题的神经网络系统。实验结果表明,我们的神经网络系统可以很好地优化受黑暗和噪声影响的图像。它还避免了在生成图像补丁时出现人为的外观。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Residual Convolutional Network for Natural Image Denoising and Brightness Enhancement
Because of the low-light shooting environment, the camera sensor will loss huge details and fuzzy edge. A deep low-light residual convolutional network (LRCNN) is proposed in this paper, which utilizes the sparse coding feature to get the true signal and adaptively adjusts the image exposure in the low-light state. The residual connections in LRCNN help us preserve more potential detail information in the original picture and accelerate the training speed of the network. Many existing image enhancement algorithms only are able to address one aspect of image problems. We designed a neural network system which could deal with many image processing problems at the same time. The experimental results show that our neural network system well optimizes the images that affected by darkness and noise. It also avoids an artificial appearance in generating the image patches.
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