Arvanitopoulos Darginis, NikolaosAchanta, RadhakrishnaSüsstrunk, Sabine2017-04-062017-04-062017-04-06201710.1109/Cvpr.2017.190https://infoscience.epfl.ch/handle/20.500.14299/136423WOS:000418371401085Reflections are a common artifact in images taken through glass windows. Automatically removing the reflection artifacts after the picture is taken is an ill-posed problem. Attempts to solve this problem using optimization schemes therefore rely on various prior assumptions from the physical world. Instead of removing reflections from a single image, which has met with limited success so far, we propose a novel approach to suppress reflections. It is based on a Laplacian data fidelity term and an l(0) gradient sparsity term imposed on the output. With experiments on artificial and real-world images we show that our reflection suppression method performs better than the state-of-the-art reflection removal techniques.Single Image Reflection Suppressiontext::conference output::conference proceedings::conference paper