Classification model for multi-sensor data fusion apply for Human Activity Recognition

Paranyu Arnon
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引用次数: 6

Abstract

Human Activity Recognition (HAR) have been developed for recognize context generated from human. In real environment system required multi -sensor for support large area and get more accuracy result. Using multi-sensor make high dimensional data which inefficacious for classification model. This paper is concerned with developing classification model that supports high dimensional data and reducing system process by used only some collected data in the decision process. A new-developed model was not developed to be the most accurate but developed to adjust level of credibility. This model was tested using simulated data from real behavior context. Test Results compared with Neural networks (NN) was similar. But developed model uses less data.
多传感器数据融合分类模型应用于人体活动识别
人类活动识别(Human Activity Recognition, HAR)是一种用于识别人类活动语境的技术。在实际环境系统中,需要多传感器来支持更大的区域,以获得更精确的结果。多传感器的使用使得数据高维,不利于分类模型的建立。本文研究了在决策过程中只使用部分收集到的数据,建立支持高维数据的分类模型,减少系统过程。新开发的模型不是为了最准确,而是为了调整可信度水平。该模型使用来自真实行为环境的模拟数据进行了测试。与神经网络(NN)的测试结果相似。但已开发模型使用的数据较少。
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