Adaptive Integrated Image Segmentation and Object Recognition
Document Type
Article
Publication Date
11-1-2000
Abstract
This paper presents a general approach to image segmentation and object recognition that can adapt the image segmentation algorithm parameters to the changing environmental conditions. Segmentation parameters are represented by a team of generalized stochastic learning automata and learned using connectionist reinforcement learning techniques. The edge-border coincidence measure is first used as reinforcement for segmentation evaluation to reduce computational expenses associated with model matching during the early stage of adaptation. This measure alone, however, can not reliably predict the outcome of object recognition. Therefore, it is used in conjunction with model matching where the matching confidence is used as a reinforcement signal to provide optimal segmentation evaluation in a closed-loop object recognition system. The adaptation alternates between global and local segmentation processes in order to achieve optimal recognition performance. Results are presented for both indoor and outdoor color images where the performance improvement over time is shown for both image segmentation and object recognition.
DOI
10.1109/5326.897070
Montclair State University Digital Commons Citation
Bhanu, Bir and Peng, Jing, "Adaptive Integrated Image Segmentation and Object Recognition" (2000). Department of Computer Science Faculty Scholarship and Creative Works. 79.
https://digitalcommons.montclair.edu/compusci-facpubs/79