Fully synthetic training for image restoration tasks

Raphaël Achddou, Y. Gousseau, Saïd Ladjal
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引用次数: 1

Abstract

. In this work, we show that neural networks aimed at solving various image restoration tasks can be successfully trained on fully synthetic data. In order to do so, we rely on a generative model of images, the scaling dead leaves model, which is obtained by superimposing disks whose size distribution is scale-invariant. Pairs of clean and corrupted synthetic images can then be obtained by a careful simulation of the degradation process. We show on various restoration tasks that such a synthetic training yields results that are only slightly inferior to those obtained when the training is performed on large natural image databases. This implies that, for restoration tasks, the geometric contents of natural images can be nailed down to only a simple generative model and a few parameters. This prior can then be used to train neural networks for specific modality, without having to rely on demanding campaigns of natural images acquisition. We demonstrate the feasibility of this approach on difficult restoration tasks, including the denoising of smartphone RAW images and the full development of low-light images.
完全合成训练图像恢复任务
。在这项工作中,我们表明,旨在解决各种图像恢复任务的神经网络可以在完全合成的数据上成功训练。为了做到这一点,我们依赖于图像的生成模型,即缩放枯叶模型,该模型是通过叠加大小分布是尺度不变的磁盘而得到的。然后,通过仔细模拟降解过程,可以获得干净和损坏的合成图像对。我们在各种恢复任务中表明,这种合成训练产生的结果仅略低于在大型自然图像数据库中执行训练时获得的结果。这意味着,对于恢复任务,自然图像的几何内容可以被确定为只有一个简单的生成模型和几个参数。这种先验可以用来训练特定模态的神经网络,而不必依赖于自然图像获取的苛刻活动。我们证明了这种方法在困难的恢复任务上的可行性,包括智能手机RAW图像的去噪和低光图像的充分开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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