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A hidden Markov model-based activity classifier for indoor tracking of first responders

机译:基于隐马尔可夫模型的活动分类器,用于室内跟踪第一响应者

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Pedestrian navigation via dead reckoning (PDR) is considered a promising domain for search and rescue personnel tracking, particularly for fire-fighters. The technique is considered particularly useful when other conventional means such as the GPS and RF-based location estimation are not present or not accurate. However, PDR approaches in real-world operating environments fail due to a wide range of factors ranging from the personnel's natural behavior to diversity of activities a first-responder may perform during a rescue mission. This technique presents a PDR activity classification technique utilizing shoe-mounted microelectromechanical sensors for efficient step and attitude analysis via a 2D Kalman filter. The methodology then utilizes HMMs for various activity types such as walking, side-stepping, crawling, etc. Tests performed on the proposed technique showed the step identification technique to perform well with an overall accuracy of 90.75% in step-counting where a simple Na?ve Bayes classifier was used. The HMM-based activity classifier presented 86% and 85% accuracy in correctly identifying upstairs and downstairs walking activity.
机译:通过DEAC RECKONING(PDR)的行人导航被认为是搜索和救助人员跟踪的有希望的领域,特别是对于消防员。当其他常规方法(如GPS和RF的位置估计)不存在或不准确时,该技术被认为是特别有用的。然而,现实世界经营环境中的PDR方法由于各种因素而导致人员自然行为与活动的多样性,首先响应在救援任务中可能表现。该技术呈现了利用鞋安装微机电机械传感器的PDR活性分类技术,用于通过2D卡尔曼滤波器有效步骤和姿态分析。然后,该方法使用HMMS用于各种活动类型,例如步行,踩踏,爬网等。对所提出的技术执行的测试显示了步骤识别技术,其在逐步计数中以90.75%的总精度执行良好的步骤识别技术使用贝贝斯分类器。基于HMM的活动分类器在正确识别楼上和楼下的步行活动中呈现86%和85%的准确性。

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