Title :
Match Box: Indoor Image Matching via Box-Like Scene Estimation
Author :
Srajer, Filip ; Schwing, Alexander G. ; Pollefeys, Marc ; Pajdla, Tomas
Abstract :
Key point matching in images of indoor scenes traditionally employs features like SIFT, GIST and HOG. While those features work very well for two images related to each other by small camera transformations, we commonly observe a drop in performance for patches representing scene elements visualized from a very different perspective. Since increasing the space of considered local transformations for feature matching decreases their discriminative abilities, we propose a more global approach inspired by the recent success of monocular scene understanding. In particular we propose to reconstruct a box-like model of the scene from every single image and use it to rectify images before matching. We show that a monocular scene model reconstruction and rectification preceding standard feature matching significantly improves key point matching and dramatically improves reconstruction of difficult indoor scenes.
Keywords :
data visualisation; feature extraction; image matching; image reconstruction; image representation; image sensors; transforms; GIST feature; HOG feature; SIFT feature; box-like scene estimation; discriminative abilities; feature matching; indoor image matching; key point matching; match box; monocular scene model reconstruction; monocular scene model rectification; monocular scene understanding; scene element representation; small camera transformations; Cameras; Estimation; Image matching; Image reconstruction; Layout; Standards; Three-dimensional displays; 3D reconstruction; image matchings; indoor scene estimation;
Conference_Titel :
3D Vision (3DV), 2014 2nd International Conference on
Conference_Location :
Tokyo
DOI :
10.1109/3DV.2014.56