Title :
Motion Segmentation of Truncated Signed Distance Function Based Volumetric Surfaces
Author :
Perera, Samunda ; Barnes, Nick ; Xuming He ; Izadi, Shahram ; Kohli, Pushmeet ; Glocker, Ben
Abstract :
Truncated signed distance function (TSDF) based volumetric surface reconstructions of static environments can be readily acquired using recent RGB-D camera based mapping systems. If objects in the environment move then a previously obtained TSDF reconstruction is no longer current. Handling this problem requires segmenting moving objects from the reconstruction. To this end, we present a novel solution to the motion segmentation of TSDF volumes. The segmentation problem is cast as CRF-based MAP inference in the voxel space. We propose: a novel data term by solving sparse multi-body motion segmentation and computing likelihoods for each motion label in the RGB-D image space, and, a novel pairwise term based on gradients of the TSDF volume. Experimental evaluation shows that the proposed approach achieves successful segmentations on reconstructions acquired with Kinect Fusion. Unlike the existing solutions which only work if the objects move completely from their initially occupied spaces, the proposed method permits segmentation of objects when they start to move.
Keywords :
cameras; image fusion; image motion analysis; image reconstruction; image segmentation; inference mechanisms; maximum likelihood estimation; CRF-based MAP inference; Kinect fusion; RGB-D camera based mapping system; TSDF based volumetric surface reconstruction; motion label likelihood; pairwise term; red-green-blue-depth camera; sparse multibody motion segmentation; static environment; truncated signed distance function; voxel space; Cameras; Computer vision; Image color analysis; Image reconstruction; Image segmentation; Motion segmentation; Three-dimensional displays;
Conference_Titel :
Applications of Computer Vision (WACV), 2015 IEEE Winter Conference on
Conference_Location :
Waikoloa, HI
DOI :
10.1109/WACV.2015.144