Publication Details
Duc Nguyen, Jan Tomasz Hanca, Shao-Ping Lu, Adrian Munteanu

IEEE International Conference on3D Imaging, IC3D

Contribution To Book Anthology


Stereo matching has been one of the most active research topics in computer vision domain for many years resulting in a large number of techniques proposed in the literature. Nevertheless, improper combinations of available tools cannot fully utilize the advantages of each method and may even lower the performance of the stereo matching system. Moreover, state-of-the-art techniques are usually optimized to perform well on a certain input dataset. In this paper we propose a framework to combine existing tools into a stereo matching pipeline and three different architectures combining existing processing steps to build stereo matching systems which are not only accurate but also efficient and robust under different operating conditions. Thorough experiments on three well-known datasets confirm the effectiveness of our proposed systems on any input data.