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一种用于日常生活活动识别的轻量级人工神经网络。

A Light-Weight Artificial Neural Network for Recognition of Activities of Daily Living.

机构信息

Department of Electronic and Electrical Engineering, Faculty of Engineering and Design, University of Bath, Bath BA2 7AY, UK.

Mechatronics Engineering Department, Faculty of Engineering, Ain Shams University, Cairo 11566, Egypt.

出版信息

Sensors (Basel). 2023 Jun 24;23(13):5854. doi: 10.3390/s23135854.

Abstract

Human activity recognition (HAR) is essential for the development of robots to assist humans in daily activities. HAR is required to be accurate, fast and suitable for low-cost wearable devices to ensure portable and safe assistance. Current computational methods can achieve accurate recognition results but tend to be computationally expensive, making them unsuitable for the development of wearable robots in terms of speed and processing power. This paper proposes a light-weight architecture for recognition of activities using five inertial measurement units and four goniometers attached to the lower limb. First, a systematic extraction of time-domain features from wearable sensor data is performed. Second, a small high-speed artificial neural network and line search method for cost function optimization are used for activity recognition. The proposed method is systematically validated using a large dataset composed of wearable sensor data from seven activities () associated with eight healthy subjects. The accuracy and speed results are compared against methods commonly used for activity recognition including deep neural networks, convolutional neural networks, long short-term memory and convolutional-long short-term memory hybrid networks. The experiments demonstrate that the light-weight architecture can achieve a high recognition accuracy of 98.60%, 93.10% and 84.77% for seen data from seen subjects, unseen data from seen subjects and unseen data from unseen subjects, respectively, and an inference time of 85 μs. The results show that the proposed approach can perform accurate and fast activity recognition with a reduced computational complexity suitable for the development of portable assistive devices.

摘要

人体活动识别(HAR)对于开发能够协助人类进行日常活动的机器人至关重要。HAR 需要准确、快速且适用于低成本可穿戴设备,以确保便携性和安全性。当前的计算方法可以实现准确的识别结果,但往往计算成本较高,不适合开发具有速度和处理能力的可穿戴机器人。本文提出了一种使用五个惯性测量单元和四个角度计附着在下肢的轻量级体系结构来识别活动。首先,从可穿戴传感器数据中系统地提取时域特征。其次,使用小型高速人工神经网络和成本函数优化的线搜索方法进行活动识别。使用由来自七个活动的可穿戴传感器数据组成的大型数据集()对所提出的方法进行系统验证,这些活动与八个健康受试者相关。将准确性和速度结果与常用于活动识别的方法进行比较,包括深度神经网络、卷积神经网络、长短时记忆和卷积长短时记忆混合网络。实验表明,轻量级体系结构可以实现 98.60%、93.10%和 84.77%的高识别准确率,分别为所见受试者的已有数据、所见受试者的未见数据和未见受试者的未见数据,推理时间为 85μs。结果表明,所提出的方法可以实现准确和快速的活动识别,具有降低的计算复杂度,适用于便携式辅助设备的开发。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/29fb/10346892/6d26d9a4ed58/sensors-23-05854-g001.jpg

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