Behavior recognition and disaster detection by the abnormal analysis using SVM for ERESS

Shingo Nakajima, Toshiki Yamasaki, Koki Matsumoto, Kazuki Uemura, T. Wada, K. Ohtsuki
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引用次数: 5

Abstract

Many lives have been lost for many years in all parts of the world by the sudden disasters such as fire and terrorism. Main causes of the damage expansion in these disasters include the escape delay of the evacuees. To support evacuation safely and quickly is one of the effective measures to reduce the victim by the disaster. So, we develop the system named Emergency Rescue Evacuation Support System (ERESS) as a system to detect a disaster using handheld terminals quickly and to guide to safety zone. This system automatically detects a disaster by analysis of the information of terminal holders, and sharing information with neighboring terminals. This paper focuses on behavior analysis of terminal holders and disaster detection which is big characteristics of ERESS. We propose an activity recognition using Support Vector Machine (SVM) and a disaster detection method by the abnormal analysis using SVM. The results of the performance evaluation by two experiments show the validity of the proposed method.
基于支持向量机的ERESS异常分析行为识别与灾害检测
多年来,世界各地因火灾和恐怖主义等突发灾害而失去了许多生命。在这些灾害中,造成损失扩大的主要原因是疏散人员的逃离延迟。支持安全、快速的疏散是减少灾害伤亡的有效措施之一。因此,我们开发了紧急救援疏散支持系统(ERESS),作为一种利用手持终端快速发现灾害并引导到安全区域的系统。该系统通过分析终端持有者的信息,并与相邻终端共享信息,自动检测灾难。本文重点研究了终端持有者的行为分析和ERESS的一大特点——灾难检测。提出了一种基于支持向量机的活动识别方法和基于支持向量机的异常分析的灾害检测方法。两个实验的性能评价结果表明了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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