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AWNet: Attentive Wavelet Network for Image ISP

机译:AWNET:图像ISP的细致小波网络

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As the revolutionary improvement being made on the performance of smartphones over the last decade, mobile photography becomes one of the most common practices among the majority of smartphone users. However, due to the limited size of camera sensors on phone, the photographed image is still visually distinct to the one taken by the digital single-lens reflex (DSLR) camera. To narrow this performance gap, one is to redesign the camera image signal processor (ISP) to improve the image quality. Owing to the rapid rise of deep learning, recent works resort to the deep convolutional neural network (CNN) to develop a sophisticated data-driven ISP that directly maps the phone-captured image to the DSLR-captured one. In this paper, we introduce a novel network that utilizes the attention mechanism and wavelet transform, dubbed AWNet, to tackle this learnable image ISP problem. By adding the wavelet transform, our proposed method enables us to restore favorable image details from RAW information and achieve a larger receptive field while remaining high efficiency in terms of computational cost. The global context block is adopted in our method to learn the non-local color mapping for the generation of appealing RGB images. More importantly, this block alleviates the influence of image misalignment occurred on the provided dataset. Experimental results indicate the advances of our design in both qualitative and quantitative measurements.
机译:由于在过去十年中对智能手机的表现进行了革命性的改进,移动摄影成为大多数智能手机用户中最常见的做法之一。然而,由于电话上的相机传感器的大小有限,所拍摄的图像仍然与数字单镜头反射(DSLR)相机拍摄的视觉上不同。为了缩小这种性能差距,一个是重新设计相机图像信号处理器(ISP)以提高图像质量。由于深度学习的迅速崛起,最近的作品诉诸深度卷积神经网络(CNN)开发一个复杂的数据驱动ISP,直接将手机捕获的图像映射到DSLR捕获的ISP。在本文中,我们介绍了一种利用注意机制和小波变换的新型网络,称为AWNET,以解决此类学习图像ISP问题。通过添加小波变换,我们的建议方法使我们能够从原始信息恢复有利的图像细节,并实现更大的接收领域,同时在计算成本方面保持高效率。我们在我们的方法中采用全局上下文块,以了解用于生成吸引力的RGB图像的非本地颜色映射。更重要的是,该块减轻了在提供的数据集上发生了图像未对准的影响。实验结果表明我们在定性和定量测量中的设计进展。

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