A GMM-Based Target Classification Scheme for a Node in Wireless Sensor Networks
スポンサーリンク
概要
- 論文の詳細を見る
In this paper, an efficient node-level target classification scheme in wireless sensor networks (WSNs) is proposed. It uses acoustic and seismic information, and its performance is verified by the classification accuracy of vehicles in a WSN. Because of the hard limitation in resources, parametric classifiers should be more preferable than non-parametric ones in WSN systems. As a parametric classifier, the Gaussian mixture model (GMM) algorithm not only shows good performances to classify targets in WSNs, but it also requires very few resources suitable to a sensor node. In addition, our sensor fusion method uses a decision tree, generated by the classification and regression tree (CART) algorithm, to improve the accuracy, so that the algorithm drives a considerable increase of the classification rate using less resources. Experimental results using a real dataset of WSN show that the proposed scheme shows a 94.10% classification rate and outperforms the k-nearest neighbors and the support vector machine.
- 2008-11-01
著者
-
JEONG Sangbae
Information and Commun. Univ.
-
Kim Daeyoung
Information And Communications University
-
Kim Youngsoo
Information And Communications University
-
Jeong Sangbae
Information And Communications University
関連論文
- Objective Pathological Voice Quality Assessment Based on HOS Features
- Pathological Voice Detection Using Efficient Combination of Heterogeneous Features
- A GMM-Based Target Classification Scheme for a Node in Wireless Sensor Networks
- An Enhanced Distortion Measure Based VBR for Waveform Interpolative Speech Coders
- New Variable-Bit-Rate Scheme for Waveform Interpolative Coders(Digital Signal Processing)
- Response Time Reduction of Speech Recognizers Using Single Gaussians(Speech and Hearing)