论文标题
可逆性重新恢复网络及其扩展
Invertible Rescaling Network and Its Extensions
论文作者
论文摘要
图像重新缩放是一种常用的双向操作,它首先降低了高分辨率图像,以适合各种显示屏屏幕或存储和带宽友好型,然后将相应的低分辨率图像提升,以恢复相应的低分辨率图像,以恢复原始的分辨率或Zoom-In图像中的详细信息。但是,非注射式降尺度映射放弃了高频内容,导致反恢复任务的问题不足。这可以作为一般图像降解率问题提取的信息丢失。在这项工作中,我们提出了一个新颖的可逆框架来处理这个一般问题,该框架从新的角度(即可逆的生物转化)模拟了双向降解和恢复。可逆性使框架能够以分布形式建模预先降低的信息丢失,从而可以减轻后恢复期间的问题。具体而言,我们开发可逆模型以生成有效的降级图像,同时将丢失内容物的分布转换为正向降解过程中潜在变量的固定分布。然后,通过在生成的降级图像上应用反向转换以及随机绘制的潜在变量,可以使恢复。我们从图像重新缩放开始,并将模型实例化为可逆重新恢复网络(IRN),可以很容易地扩展到类似的脱色颜色任务。我们进一步建议将可逆框架与现有降解方法(例如用于更广泛应用的图像压缩)相结合。实验结果证明了我们的模型比现有方法的显着改善,从定量和定性评估中,对缩放和化着缩放和脱色图像的重建以及图像压缩的速率延伸。
Image rescaling is a commonly used bidirectional operation, which first downscales high-resolution images to fit various display screens or to be storage- and bandwidth-friendly, and afterward upscales the corresponding low-resolution images to recover the original resolution or the details in the zoom-in images. However, the non-injective downscaling mapping discards high-frequency contents, leading to the ill-posed problem for the inverse restoration task. This can be abstracted as a general image degradation-restoration problem with information loss. In this work, we propose a novel invertible framework to handle this general problem, which models the bidirectional degradation and restoration from a new perspective, i.e. invertible bijective transformation. The invertibility enables the framework to model the information loss of pre-degradation in the form of distribution, which could mitigate the ill-posed problem during post-restoration. To be specific, we develop invertible models to generate valid degraded images and meanwhile transform the distribution of lost contents to the fixed distribution of a latent variable during the forward degradation. Then restoration is made tractable by applying the inverse transformation on the generated degraded image together with a randomly-drawn latent variable. We start from image rescaling and instantiate the model as Invertible Rescaling Network (IRN), which can be easily extended to the similar decolorization-colorization task. We further propose to combine the invertible framework with existing degradation methods such as image compression for wider applications. Experimental results demonstrate the significant improvement of our model over existing methods in terms of both quantitative and qualitative evaluations of upscaling and colorizing reconstruction from downscaled and decolorized images, and rate-distortion of image compression.