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Mixed-Noise Removal in Images Based on a Convolutional Neural Network

机译:基于卷积神经网络的图像混合噪声去除

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Aiming at limiting drawbacks of denoising algorithms that can only remove one or two specific types of noise (and which are inefficient for other types), we propose a combined neural-network model fox-mixed-noise removal in images. Nine convolutional layers are adapted, and noisy images are trained through feature extraction, shrinking, nonlinear mapping, expanding, and reconstruction. Experimental results show that the algorithm achieves better denoising results and is more suitable than other algorithms for dealing with different types of mixed noise in images. Subjective visual effects and an objective evaluation demonstrate the achieved improvements.
机译:旨在限制去噪算法的缺点,该算法只能去除一个或两个特定类型的噪声(并且对于其他类型效率低),我们提出了一种在图像中组合的神经网络模型狐狸混合噪声去除。九个卷积层进行调整,并且通过特征提取,收缩,非线性映射,扩展和重建培训嘈杂的图像。实验结果表明,该算法实现了更好的去噪结果,比其他算法更适合于处理图像中不同类型的混合噪声。主观视觉效果和客观评估证明了实现的改进。

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