SVM-instance based approach to improve QoS parameters for time critical applications in WSN

V. Chitra, M. Sumalatha
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引用次数: 2

Abstract

The QoS factors such as accuracy and time delay plays a major role in time critical applications. The proposed SVM-instance based algorithm improves the accuracy and reduces the time delay for the recognition of emergency vehicle sound. In this approach, the time delay is reduced by identifying the support vectors which are the data points near the margin of hyper plane and the accuracy is increased by increasing the margin between the classes. The MFCC which is derived from frequency and intensity is used for accurate sound recognition. Thus time delay was reduced and accuracy was improved in recognition of emergency vehicle sound.
基于svm实例的无线传感器网络时间关键应用QoS参数改进方法
在时间关键型应用中,精度和时延等QoS因素起着重要作用。提出的基于svm实例的应急车辆声音识别算法提高了识别精度,减少了时间延迟。在该方法中,通过识别靠近超平面边缘的数据点作为支持向量来减少时间延迟,并通过增加类之间的边界来提高精度。由频率和强度推导出的MFCC用于精确的声音识别。从而减少了时间延迟,提高了应急车辆声音识别的准确性。
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