Title :
Convex Optimization for Scene Understanding
Author :
Souiai, Mohamed ; Nieuwenhuis, Claudia ; Strekalovskiy, Evgeny ; Cremers, Daniel
Author_Institution :
Tech. Univ. of Munich, Munich, Germany
Abstract :
In this paper we give a convex optimization approach for scene understanding. Since segmentation, object recognition and scene labeling strongly benefit from each other we propose to solve these tasks within a single convex optimization problem. In contrast to previous approaches we do not rely on pre-processing techniques such as object detectors or super pixels. The central idea is to integrate a hierarchical label prior and a set of convex constraints into the segmentation approach, which combine the three tasks by introducing high-level scene information. Instead of learning label co-occurrences from limited benchmark training data, the hierarchical prior comes naturally with the way humans see their surroundings.
Keywords :
convex programming; object detection; object recognition; benchmark training data; convex constraints; convex optimization problem; object detectors; object recognition; preprocessing techniques; scene labeling; scene understanding; super pixels; Context; Convex functions; Joints; Labeling; Object recognition; Optimization; Roads; Convex Optimization; Convex Relaxation; Hierarchical Multi Labeling; Image Segmentation; Scene Understanding;
Conference_Titel :
Computer Vision Workshops (ICCVW), 2013 IEEE International Conference on
Conference_Location :
Sydney, NSW
DOI :
10.1109/ICCVW.2013.131