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Optimal Sensor Location for Body Sensor Network to Detect Self-Stimulatory Behaviors of Children with Autism Spectrum Disorder

机译:用于身体传感器网络的最佳传感器位置,以检测自闭症谱系障碍儿童的自刺激行为

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In this study, we investigate various locations of sensor positions to detect stereotypical self-stimulatory behavioral patterns of children with Autism Spectrum Disorder (ASD). The study is focused on finding optimal detection performance based on sensor location and number of sensors. To perform this study, we developed a wearable sensor system that uses a 3 axis accelerometer. A microphone was used to understand the surrounding environment and video provided ground truth for analysis. The recordings were done on 2 children diagnosed with ASD who showed repeated self-stimulatory behaviors that involve part of the body such as flapping arms, body rocking and vocalization of non-word sounds. We used time-frequency methods to extract features and sparse signal representation methods to design over-complete dictionary for data analysis, detection and classification of these ASD behavioral events. We show that using single sensor on the back achieves 95.5% classification rate for rocking and 80.5% for flapping. In contrast, flapping events can be recognized with 86.5% accuracy using wrist worn sensors.
机译:在这项研究中,我们研究了传感器位置的各个位置,以检测自闭症谱系疾病(ASD)的陈规定型自刺激行为模式。该研究专注于基于传感器位置和传感器数来找最佳检测性能。为了进行这项研究,我们开发了一种可穿戴传感器系统,使用3轴加速度计。麦克风被用来了解周围环境和视频提供了分析的原始真理。录音是在诊断出亚本大学的2名儿童完成的,他们表现出涉及部分身体的重复的自我刺激行为,例如拍打武器,身体摇摆和非字声音的发声。我们使用时间频率方法来提取特征和稀疏信号表示方法来设计用于数据分析,检测和分类这些ASD行为事件的完整字典。我们表明,在背面使用单个传感器实现95.5%的摇摆分类率,80.5%用于拍打。相比之下,拍打事件可以使用手腕磨损的传感器以86.5%的精度识别。

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