基于深度网络的光谱灵敏度函数联合学习与去马赛克

Fan Zhang, Chen-Yan Bai
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引用次数: 0

摘要

去马赛克是用彩色滤波阵列(CFA)从单个传感器记录的拼接图像中重建RGB图像,通过深度学习已经取得了很大进展。介绍了一些基于深度学习的联合CFA设计和去马赛克的研究工作。然而,几乎所有现有的方法都只关注优化滤波器的排列,而没有考虑使用的光谱灵敏度函数(ssf)。常用的ssf是模仿人类的三色感知,这对于基于深度学习的去马赛克来说不是最佳的。在本文中,我们使用深度卷积神经网络同时学习CFA和去马赛克,其中滤波器的排列和使用的ssf都进行了优化。通过将ssf建模为具有物理约束的卷积层,我们将联合学习方法制定为端到端自编码器,可以作为标准卷积神经网络进行训练。我们的方法允许设计任意大小的CFA模式,其中过滤器的安排可以预定义或不预定义。通过与固定高斯函数和各种预定义滤波器安排的比较,证明了该方法的有效性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Jointly Learning Spectral Sensitivity Functions and Demosaicking via Deep Networks
Demosaicking is reconstructing a RGB image from the mosaicked image recorded by a single sensor with a color filter array (CFA), which has achieved great progress via deep learning. Some works on joint CFA design and demosaicking via deep learning have been presented. However, almost all existing approaches focus only on optimizing filter arrangements without considering the used spectral sensitivity functions (SSFs). The commonly used SSFs are to mimic human trichromatic perception, which are not optimal for deep-learning-based de-mosaicking. In this paper, we simultaneously learn the CFA and demosaicking using a deep convolutional neural network, where both the filter arrangement and used SSFs are optimized. By modeling the applying of SSFs as a convolutional layer with physical constraints, we formulate our joint learning approach as an end-to-end autoencoder, which can be trained as the standard convolutional neural networks. Our approach allows the designing of CFA patterns with arbitrary sizes, where the filter arrangements can be predefined or not. We demonstrate the effectiveness and advantages of our approach by comparing with fixed Gaussian functions and various predefined filter arrangements.
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