Title :
Enhancing consensus in multiple expert decision fusion
Author :
Fairhurst, M.C. ; Rahman, A.F.R.
Author_Institution :
Electron. Eng. Labs., Kent Univ., Canterbury, UK
fDate :
2/1/2000 12:00:00 AM
Abstract :
ENCORE (Enhanced Consensus in Recognition) is a new classifier structure based on decision fusion of multiple experts (classifiers). When more than one classifier (expert) is available and it is required to combine their decisions, a fundamental aim may be to incorporate a sense of decision consensus. Alternatively, it may be considered important to ensure that appropriate weights are given to more competent classifiers. These two requirements may be mutually contradictory, as the first aims to ensure giving higher emphasis to the best decision delivered by the majority, while the second aims to ensure finding the most appropriate classifier and then giving higher weight to its decision. A new multiple expert classifier (ENCORE) is introduced which implements a decision consensus approach: but the quality of the consensus is evaluated in terms of the past track record of the consenting experts before it is accepted. The ENCORE system has been found to offer greater flexibility of performance in a character recognition task. Detailed analysis using two different databases illustrates the capabilities of this system, although the structure proposed is generic in nature, and may be readily applied to other task domains
Keywords :
character recognition; image classification; image recognition; ENCORE; character recognition task; classifier structure; databases; decision consensus; enhancing consensus; multiple expert classifier; multiple expert decision fusion;
Journal_Title :
Vision, Image and Signal Processing, IEE Proceedings -
DOI :
10.1049/ip-vis:20000105