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Human Motion Recognition Based on Incremental Learning and Smartphone Sensors

Human Motion Recognition Based on Incremental Learning and Smartphone Sensors
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摘要 Batch processing mode is widely used in the training process of human motiun recognition. After training, the motion elassitier usually remains invariable. However, if the classifier is to be expanded, all historical data must be gathered for retraining. This consumes a huge amount of storage space, and the new training process will be more complicated. In this paper, we use an incremental learning method to model the motion classifier. A weighted decision tree is proposed to help illustrate the process, and the probability sampling method is also used. The resuhs show that with continuous learning, the motion classifier is more precise. The average classification precision for the weighted decision tree was 88.43% in a typical test. Incremental learning consumes much less time than the batch processing mode when the input training data comes continuously. Batch processing mode is widely used in the training process of human motiun recognition. After training, the motion elassitier usually remains invariable. However, if the classifier is to be expanded, all historical data must be gathered for retraining. This consumes a huge amount of storage space, and the new training process will be more complicated. In this paper, we use an incremental learning method to model the motion classifier. A weighted decision tree is proposed to help illustrate the process, and the probability sampling method is also used. The resuhs show that with continuous learning, the motion classifier is more precise. The average classification precision for the weighted decision tree was 88.43% in a typical test. Incremental learning consumes much less time than the batch processing mode when the input training data comes continuously.
出处 《ZTE Communications》 2016年第B06期59-66,共8页 中兴通讯技术(英文版)
基金 partly supported by the National Natural Science Foundation of China under Grant 61573242 the Projects from Science and Technology Commission of Shanghai Municipality under Grant No.13511501302,No.14511100300,and No.15511105100 Shanghai Pujiang Program under Grant No.14PJ1405000 ZTE Industry-Academia-Research Cooperation Funds
关键词 human motion recognition ineremental learning mappingfunction weighted decision tree probability sampling human motion recognition ineremental learning mappingfunction weighted decision tree probability sampling
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