Deep Activity Recognition Models with Triaxial Accelerometers
Alsheikh, Mohammad Abu (Nanyang Technological University) | Selim, Ahmed (Trinity College Dublin) | Niyato, Dusit (Nanyang Technological University) | Doyle, Linda (Trinity College Dublin) | Lin, Shaowei (Institute for Infocomm Research) | Tan, Hwee-Pink (Singapore Management University)
Despite the widespread installation of accelerometers in almost all mobile phones and wearable devices, activity recognition using accelerometers is still immature due to the poor recognition accuracy of existing recognition methods and the scarcity of labeled training data. We consider the problem of human activity recognition using triaxial accelerometers and deep learning paradigms. This paper shows that deep activity recognition models (a) provide better recognition accuracy of human activities, (b) avoid the expensive design of handcrafted features in existing systems, and (c) utilize the massive unlabeled acceleration samples for unsupervised feature extraction. We show substantial recognition improvement on real world datasets over state-of-the-art methods of human activity recognition using triaxial accelerometers.
Apr-12-2016
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