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A Real Noise Elimination Method for CMOS Image Sensor Based on Three-Channel Convolution Neural Network

机译:一种基于三通道卷积神经网络的CMOS图像传感器真实消噪方法

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摘要

In the imaging process of CMOS image sensors, several kinds of noise will be introduced into the image. Most image denoising algorithms are developed for additive white Gaussian noise (AWGN). But the noise in the real image does not completely conform to a Gaussian distribution. The noise in the real image is complex and difficult to be modeled analysis. In this paper, a three-channel convolution neural network (TC-CNN) denoising method for real RGB image is proposed. The TC-CNN denoising method separates the real image to three images of each RGB channel. The convolution neural network is used for denoising each channel image. A new loss function and a new network architecture are proposed, this work makes the convolution neural network more suitable for denoising work. Experiment on real image datasets shows that the TC-CNN denoising method has better denoising result than the common denoising method.
机译:在CMOS图像传感器的成像过程中,图像中会引入几种噪声。大多数图像去噪算法都是为加性白高斯噪声 (AWGN) 开发的。但真实图像中的噪声并不完全符合高斯分布。真实图像中的噪声复杂,难以建模分析。该文提出一种针对真实RGB图像的三通道卷积神经网络(TC-CNN)去噪方法。TC-CNN去噪方法将真实图像分离为每个RGB通道的三个图像。卷积神经网络用于对每个通道图像进行去噪。提出了一种新的损失函数和一种新的网络架构,使卷积神经网络更适合去噪工作。在真实图像数据集上的实验表明,TC-CNN去噪方法的去噪效果优于普通去噪方法。

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