When taking photos under an environment with insufficient light, the exposure time and the sensor gain usually require to be carefully chosen to obtain images with satisfying visual quality. For example, the images with high ISO usually have inescapable noise, while the long-exposure ones may be blurry due to camera shake or object motion. Existing solutions generally suggest to seek a balance between noise and blur, and learn denoising or deblurring models under either full- or self-supervision. However, the real-world training pairs are difficult to collect, and the self-supervised methods merely rely on blurry or noisy images are limited in performance. In this work, we tackle this problem by jointly leveraging the short-exposure noisy image and the long-exposure blurry image for better image restoration. Such setting is practically feasible due to that short-exposure and long-exposure images can be either acquired by two individual cameras or synthesized by a long burst of images. Moreover, the short-exposure images are hardly blurry, and the long-exposure ones have negligible noise. Their complementarity makes it feasible to learn restoration model in a self-supervised manner. Specifically, the noisy images can be used as the supervision information for deblurring, while the sharp areas in the blurry images can be utilized as the auxiliary supervision information for self-supervised denoising. By learning in a collaborative manner, the deblurring and denoising tasks in our method can benefit each other. Experiments on synthetic and real-world images show the effectiveness and practicality of the proposed method. Codes are available at https://github.com/cszhilu1998/SelfIR.
翻译:当在光线不足的环境中拍摄照片时,曝光时间和传感器增益通常需要谨慎选择,才能以令人满意的视觉质量获得图像。例如,高ISOISO的图像通常有不可避免的噪音,而长期接触的图像则由于摄像头摇动或物体运动而模糊不清。现有的解决方案一般表明要在噪音和模糊之间求得平衡,或者在全视或自视的环境下学习脱色或脱色模型。然而,真实世界培训配对难以收集,而自我监督的图像仅依赖模糊或噪音图像的性能有限。在这项工作中,我们联合利用短曝光的噪音图像和长期接触的模糊图像来解决这个问题,以便更好地恢复图像。这种设置实际上可行,因为短曝光和长期接触的图像可以由两个单独的照相机获得,或者由长期的图像组合合成。此外,短曝光的图像几乎不易模糊,而长期曝光的图像在性能方面也有可忽略的噪音。它们之间的互补性,通过在自我监督过程中学习精确的恢复方法,在自我监督过程中可以使用一种精确的模型,在自我监督过程中可以使用。