Publication
Title
Towards cautious collective inference for object verification
Author
Abstract
It is by now generally accepted that reasoning about the relationships between objects (and object hypotheses) can improve the accuracy of object detection methods. Relations between objects allow to reject inconsistent hypotheses and reduce the uncertainty of the initial hypotheses. However, most methods to date reason about object relations in a relatively crude way. In this paper we propose an alternative using cautious inference. Building on ideas from Collective Classification, we favor the most confident hypotheses as sources of contextual information and give higher relevance to the object relations observed during training. Additionally, we propose to cluster the pairwise relations into relationships. Our experiments on part of the KITTI data benchmark and the MIT StreetScenes dataset show that both steps improve the performance of relational classifiers.
Language
English
Source (journal)
2014 IEEE WINTER CONFERENCE ON APPLICATIONS OF COMPUTER VISION (WACV)
Source (book)
IEEE Winter Conference on Applications of Computer Vision (WACV), MAR 24-26, 2014, Steamboat Springs, CO
Publication
New york : Ieee , 2014
Volume/pages
(2014) , p. 269-276
ISI
000356144800040
UAntwerpen
Publication type
Subject
External links
Web of Science
Record
Identifier
Creation 23.10.2019
Last edited 28.10.2024
To cite this reference