Current position: Home >> Scientific Research >> Paper Publications

A New Fuzzy C-means Algorithm Based on EntropyCoding and Application in Traffic State Classification

Release Time:2019-03-11  Hits:

Indexed by: Journal Article

Date of Publication: 2010-01-01

Journal: Journal of Information and Computational Science

Included Journals: Scopus、EI

Volume: 7

Issue: 1

Page Number: 119-125

Abstract: The feather vector set with higher dimensionality causes the worse convergency to realistic in practice using the conventional fuzzy C-means algorithm. In this paper, a novel algorithm called the fuzzy C-means based on Entropy Coding, FCM-EC, is realized by adding a powerful method based on entropy coding to the conventional fuzzy C-means algorithm. And it is applied to classify the traffic state with a high-dimensional feature set space. Experimental results on real traffic data show that the FCM-EC has better performance and robust than the conventional fuzzy C-means algorithm when the feature set space is high-dimensional. Copyright ? 2010 Binary Information Press.

Prev One:Opportunistic Routing for Time-variety and Load-balance over Wireless Sensor Networks

Next One:基于声敏传感器和盲信号处理的多车辆检测算法