AIFA, Dotin, Tehran, 1915718181, Iran.
Department of Computer Science & Digital Technologies, School of Architecture, Computing, and Engineering, University of East London, London, E16 2RD, UK.
Comput Biol Med. 2024 Apr;172:108232. doi: 10.1016/j.compbiomed.2024.108232. Epub 2024 Feb 27.
Human activity recognition (HAR) based on Wi-Fi signals has attracted significant attention due to its convenience and the availability of infrastructures and sensors. Channel State Information (CSI) measures how Wi-Fi signals propagate through the environment. However, many scenarios and applications have insufficient training data due to constraints such as cost, time, or resources. This poses a challenge for achieving high accuracy levels with machine learning techniques. In this study, multiple deep learning models for HAR were employed to achieve acceptable accuracy levels with much less training data than other methods. A pretrained encoder trained from a Multi-Input Multi-Output Autoencoder (MIMO AE) on Mel Frequency Cepstral Coefficients (MFCC) from a small subset of data samples was used for feature extraction. Then, fine-tuning was applied by adding the encoder as a fixed layer in the classifier, which was trained on a small fraction of the remaining data. The evaluation results (K-fold cross-validation and K = 5) showed that using only 30% of the training and validation data (equivalent to 24% of the total data), the accuracy was improved by 17.7% compared to the case where the encoder was not used (with an accuracy of 79.3% for the designed classifier, and an accuracy of 90.3% for the classifier with the fixed encoder). While by considering more calculational cost, achieving higher accuracy using the pretrained encoder as a trainable layer is possible (up to 2.4% improvement), this small gap demonstrated the effectiveness and efficiency of the proposed method for HAR using Wi-Fi signals.
基于 Wi-Fi 信号的人体活动识别 (HAR) 由于其便利性以及基础设施和传感器的可用性而引起了广泛关注。信道状态信息 (CSI) 衡量 Wi-Fi 信号在环境中的传播方式。然而,由于成本、时间或资源等限制,许多场景和应用的训练数据都不足。这对于使用机器学习技术达到高精度水平提出了挑战。在这项研究中,使用了多个用于 HAR 的深度学习模型,以使用比其他方法少得多的训练数据来达到可接受的精度水平。使用从一小部分数据样本的梅尔频率倒谱系数 (MFCC) 上的多输入多输出自动编码器 (MIMO AE) 训练的预训练编码器进行特征提取。然后,通过在分类器中添加编码器作为固定层来进行微调,该分类器在一小部分剩余数据上进行训练。评估结果(K 折交叉验证和 K=5)表明,仅使用 30%的训练和验证数据(相当于总数据的 24%),与不使用编码器的情况相比,精度提高了 17.7%(设计分类器的准确率为 79.3%,具有固定编码器的分类器的准确率为 90.3%)。虽然考虑到更多的计算成本,但使用预训练编码器作为可训练层可以实现更高的精度(提高 2.4%),但这个小差距证明了该方法在使用 Wi-Fi 信号进行 HAR 方面的有效性和效率。