Abstract
This paper presents a simple and effective cost volume ag- gregation framework for addressing pixels labeling problem. Our idea is based on the observation that incorrect labelings are greatly reduced in cost volume aggregation results from low resolutions. However, image details may be lost in the low resolution results. To take advantage of the results from low resolution for reducing these incorrect label- ings while preserving details, we propose a multi-resolution cost ag- gregation method (MultiAgg) by using a soft fusion scheme based on min-convolution. We implement our MultiAgg in applications on stereo matching and interactive image segmentation. Experimental results show that our method significantly outperforms conventional cost aggregation methods in labeling accuracy. Moreover, although MultiAgg is a sim- ple and straight-forward method, it produces results which are close to or even better than those from iterative methods based on global optimization.