Activity Recognition from Sensor Fusion on Fireman's Helmet.

CISP-BMEI(2019)

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摘要
Recognizing human activities in emergency situations is critical for first responders to ensure their safety and well-being. In many cases, the thick smoke in a burning building impairs computer vision algorithms for activity recognition. Here we present a helmet-based sensor fusion method with IMU and time-of-fly laser distance sensor. We use a Decision Tree to as a classifier and select the most significant features. Our test shows that the method can recognize over seven activities: walking, running, crawling, duck walking, standing, walking upstairs and downstairs, with an accuracy between 81.7%• and 93.6%. With limited training data and a lightweight requirement for implementation on the firemanu0027s helmet the Decision Tree provided an accurate and reliable result. The use of the 1-D Lidar, which is not feasible in typical activity recognition application but essential for the helmet, combined with the 10-DOF IMU sensors improved the robustness of the classifier. We found this sensor fusion approach needs much less training data, compared to methods such as Deep Learning. Once implemented on the helmet the activity recognition is executed in real-time at sampling rate at 50 Hz within a 2-second window.
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关键词
activity recognition,gesture recognition,wearable sensors,sensor fusion,augmented reality,helmet,IMU,pitch,time-of-fly laser,distance measurement,first response,fire-fighting,decision tree,human-computer interaction,sensor,decision-making,classification,pattern recognition
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