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Joint Demosaicking and Denoising for CFA and MSFA Images Using a Mosaic-Adaptive Dense Residual Network

机译:使用马赛克 - 自适应密集的残余网络联合去脱落和去噪和去噪

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Color filter array (CFA) has been a basis for modern photography and recently multispectral filter array (MSFA) has gradually found its wide application. A deep learning network capable of joint demosaicking and denoising for both CFA and MSFA raw images is proposed in this paper. First, a novel dense residual network that includes multiple types of skip connections is introduced to learn features at different resolutions. Then, mosaic adaptive convolution and data augmentation based on mosaic shifting are put forward to fully make use of common characteristics of CFA and MSFA mosaic images. Moreover, an L1 loss function normalized by noise standard deviation is suggested to train the deep residual network so it does not rely on an explicit input of known or estimated noise standard deviation. Extensive experiments using simulated and real mosaic images from CFA cameras demonstrate that the proposed mosaic-adaptive dense residual network (MDRN) outperforms other state-of-the-art deep learning algorithms significantly. For simulated MSFA mosaics and real MSFA raw images, it also shows much improved results compared to other methods.
机译:滤色器阵列(CFA)是现代摄影的基础,最近多光谱滤波器阵列(MSFA)已逐渐找到了广泛的应用。本文提出了一种能够联合去脱模和去噪的深度学习网络,并在本文中提出了CFA和MSFA原料图像。首先,引入了包括多种类型的跳过连接的新型密集的残余网络,以在不同的分辨率下学习特征。然后,提出了基于马赛克转移的马赛克自适应卷积和数据增强,以充分利用CFA和MSFA马赛克图像的共同特征。此外,建议通过噪声标准偏差标准化的L1损耗函数来训练深度剩余网络,因此不依赖于已知或估计噪声标准偏差的显式输入。来自CFA摄像机的模拟和真实马赛克图像的广泛实验表明,所提出的马赛克 - 自适应稠密网络(MDRN)显着优于其他最先进的深度学习算法。对于模拟MSFA马赛克和真实的MSFA原始图像,与其他方法相比也显示出大量改进的结果。

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