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Device-Free, Activity During Daily Life, Recognition Using a Low-Cost Lidar

Zixiang Ma, John Bigham, Stefan Poslad, Bang Wu, Xiaoshuai Zhang, Eliane Bodanese

Year
2018
Citations
13

Abstract

Device-free or off-body sensing methods, such as Lidar, can be used for location-driven Activities during Daily Life (ADL) recognition without the need for a mobile host such as a human or robot to use on-body location sensors. Because if such an attachment fails, or is not operational (powered up), when such mobile hosts are device free, it still works. Hence, this paper proposes an innovative method for recognizing ADLs using a state-of-art seq2seq Recurrent Neural Network (RNN) model to classify centimeter level accurate location data from a low-cost, 360°rotating 2D Lidar device. We researched, developed, deployed and validated the system. The results indicate that it can provide a centimeter-level localization accuracy of 88% when recognizing 17 targeted location-related daily activities.

Keywords

LidarComputer scienceHost (biology)Mobile deviceRecurrent neural networkMobile robotRangingReal-time computingActivity recognitionRobot

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