Publication | Open Access
Distilling the Knowledge From Handcrafted Features for Human Activity Recognition
151
Citations
33
References
2018
Year
Convolutional Neural NetworkEngineeringMachine LearningHuman Pose EstimationImage AnalysisKinesiologyData SciencePattern RecognitionEmbedded Machine LearningRobot LearningHuman Activity RecognitionVideo TransformerMultimodal Human Computer InterfaceHealth SciencesMachine VisionDanceFeature LearningComputer ScienceDeep LearningComputer VisionGesture RecognitionDeep Neural NetworksHuman-computer InteractionHuman MovementActivity RecognitionDeep Lstm Network
Human activity recognition is a core problem in intelligent automation systems due to its far-reaching applications including ubiquitous computing, health-care services, and smart living. Due to the nonintrusive property of smartphones, smartphone sensors are widely used for the identification of human activities. However, unlike applications in vision or data mining domain, feature embedding from deep neural networks performs much worse in terms of recognition accuracy than properly designed handcrafted features. In this paper, we posit that feature embedding from deep neural networks may convey complementary information and propose a novel knowledge distilling strategy to improve its performance. More specifically, an efficient shallow network, i.e., single-layer feedforward neural network (SLFN), with handcrafted features is utilized to assist a deep long short-term memory (LSTM) network. On the one hand, the deep LSTM network is able to learn features from raw sensory data to encode temporal dependencies. On the other hand, the deep LSTM network can also learn from SLFN to mimic how it generalizes. Experimental results demonstrate the superiority of the proposed method in terms of recognition accuracy against several state-of-the-art methods in the literature.
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