Publication: Dynamic learning from multiple examples for semantic object segmentation and search
Program
KU-Authors
KU Authors
Co-Authors
Xu, Yaowu
Saber, Eli
Advisor
Publication Date
Language
English
Type
Journal Title
Journal ISSN
Volume Title
Abstract
We present a novel "dynamic learning" approach for an intelligent image database system to automatically improve object segmentation and labeling without user intervention, as new examples become available, for object-based indexing. The proposed approach is an extension of our earlier work on "learning by example," which addressed labeling of similar objects in a set of database images based on a single example. The proposed dynamic learning procedure utilizes multiple example object templates to improve the accuracy of existing object segmentations and labels. Multiple example templates may be images of the same object from different viewing angles, or images of related objects. This paper also introduces a new shape similarity metric called normalized area of symmetric differences (NASD), which has desired properties for use in the proposed "dynamic learning" scheme, and is more robust against boundary noise that results from automatic image segmentation. Performance of the dynamic learning procedures has been demonstrated by experimental results.
Source:
Computer Vision and Image Understanding
Publisher:
Academic Press Ltd-Elsevier Science Ltd
Keywords:
Subject
Computer science, artificial intelligence, Engineering, electrical and electronic