Siamese Dense Network for Reflection Removal with Flash and No-Flash Image Pairs

作者:Yakun Chang, Cheolkon Jung, Jun Sun, Fengqiao Wang

摘要

This work addresses the reflection removal with flash and no-flash image pairs to separate reflection from transmission. When objects are covered by glass, the no-flash image usually contains reflection, and thus flash is used to enhance transmission details. However, the flash image suffers from the specular highlight on the glass surface caused by flash. In this paper, we propose a siamese dense network (SDN) for reflection removal with flash and no-flash image pairs. SDN extracts shareable and complementary features via concatenated siamese dense blocks. We utilize an image fusion block for the SDN to fuse the intermediate output of two branches. Since severe information loss occurs in the specular highlight, we detect the specular highlight in the flash image based on gradient of the maximum chromaticity. Through observations, flash causes various artifacts such as tone distortion and inhomogeneous brightness. Thus, with synthetic datasets we collect 758 pairs of real flash and no-flash image pairs (including their ground truth) by different cameras to gain generalization. Various experiments show that the proposed method successfully removes reflections using flash and no-flash image pairs and outperforms state-of-the-art ones in terms of visual quality and quantitative measurements. Besides, we apply the SDN to color/depth image pairs and achieve both color reflection removal and depth filling.

论文关键词:Deep learning, Reflection removal, Image restoration, Flash/no-flash, Image fusion, Layer separation, Depth filling

论文评审过程:

论文官网地址:https://doi.org/10.1007/s11263-019-01276-z