4.6 Article

HARNAS: Human Activity Recognition Based on Automatic Neural Architecture Search Using Evolutionary Algorithms

期刊

SENSORS
卷 21, 期 20, 页码 -

出版社

MDPI
DOI: 10.3390/s21206927

关键词

deep learning; human activity recognition; multi-objective optimization; multimodal sensor data; neural architecture search

资金

  1. National Natural Science Foundation of China [62071056]
  2. Action Plan Project of Beijing University of Posts and Telecommunications [2020XD-A03-2]

向作者/读者索取更多资源

Researchers proposed a method using NAS for HAR task model search, achieving results superior to manually adjusted best models. By using a multi-objective search algorithm and considering the balance between computation speed and complexity, excellent performance was achieved.
Human activity recognition (HAR) based on wearable sensors is a promising research direction. The resources of handheld terminals and wearable devices limit the performance of recognition and require lightweight architectures. With the development of deep learning, the neural architecture search (NAS) has emerged in an attempt to minimize human intervention. We propose an approach for using NAS to search for models suitable for HAR tasks, namely, HARNAS. The multi-objective search algorithm NSGA-II is used as the search strategy of HARNAS. To make a trade-off between the performance and computation speed of a model, the F1 score and the number of floating-point operations (FLOPs) are selected, resulting in a bi-objective problem. However, the computation speed of a model not only depends on the complexity, but is also related to the memory access cost (MAC). Therefore, we expand the bi-objective search to a tri-objective strategy. We use the Opportunity dataset as the basis for most experiments and also evaluate the portability of the model on the UniMiB-SHAR dataset. The experimental results show that HARNAS designed without manual adjustments can achieve better performance than the best model tweaked by humans. HARNAS obtained an F1 score of 92.16% and parameters of 0.32 MB on the Opportunity dataset.

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