Activity classification of the elderly based on lightweight convolutional neural networks

Hanzhang Ding, Wenzhang Zhu
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Abstract

Accurate implementation of action classification for the elderly on lightweight convolutional neural networks benefits resource-limited embedded and mobile devices in the healthcare industry. The study proposes a lightweight convolutional neural network model called mD-MobileNet. The micro-Doppler feature spectrograms of 106 elderly people were studied as a dataset. Transfer learning methods were used to train the proposed model, and three lightweight convolutional neural networks (MobileNetV3-Small, ShuffleNetV2, and EfficientNet-B0) were compared using the same training method. All of these models were able to correctly classify various actions. By comparison, mD-MobileNet gave the best classification results. mD-MobileNet’s Top-1 Accuracy reached 96.1% while Marco F1 was 96.30. By comparing the results with Grad-CAM’s visualization and analyzing them in conjunction with its network structure features, it was determined that mD-MobileNet has the best local perception with the least number of model parameters and the highest accuracy rate compared to other models.
基于轻量级卷积神经网络的老年人活动分类
在轻量级卷积神经网络上准确实现老年人的动作分类,有利于医疗保健行业中资源有限的嵌入式和移动设备。该研究提出了一种称为mD-MobileNet的轻量级卷积神经网络模型。以106名老年人的微多普勒特征谱为数据集进行研究。采用迁移学习方法对所提出的模型进行训练,并使用相同的训练方法对三个轻量级卷积神经网络(MobileNetV3-Small、ShuffleNetV2和EfficientNet-B0)进行比较。所有这些模型都能够正确地对各种动作进行分类。通过比较,mD-MobileNet给出了最好的分类结果。mD-MobileNet的Top-1准确率达到96.1%,Marco F1为96.30。将结果与Grad-CAM的可视化结果进行比较,并结合其网络结构特征进行分析,确定mD-MobileNet与其他模型相比具有最佳的局部感知,模型参数数量最少,准确率最高。
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