基于微多普勒特征的数据增强和特征拼接的高级人类活动识别

IF 0.8 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC International Journal of Electrical and Computer Engineering Systems Pub Date : 2023-10-24 DOI:10.32985/ijeces.14.8.7
Djazila Souhila Korti, Zohra Slimane
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引用次数: 0

摘要

为基于雷达的人类活动识别(HAR)开发准确的分类模型,能够解决现实世界的问题,在很大程度上取决于可用数据的数量。在本文中,我们提出了一种简单、有效和通用的数据增强策略,并对微多普勒特征进行预处理,以提高识别性能。通过利用离散小波变换(DWT)的分解特性,生成具有不同特征的新样本,这些特征不与原始样本重叠。将微多普勒特征投影到DWT空间,利用Haar小波进行分解。在不同的配置中使用返回的分解组件来生成新数据。从单个谱图中获得三个新的样本,这增加了训练数据的数量,而不会产生重复。接下来,使用索贝尔滤波器处理增强的样本。此步骤允许将每个样本扩展为三种表示,包括x方向(Dx), y方向(Dy)以及x和y方向(Dxy)的梯度。这些表征被用作训练三输入卷积神经网络-长短期记忆支持向量机(CNN-LSTM-SVM)模型的输入。我们通过对包含人类活动微多普勒特征的三个数据集进行评估来评估我们的解决方案的可行性,包括调频连续波(FMCW) 77 GHz, FMCW 24 GHz和脉冲无线电超宽带(IR-UWB) 10 GHz数据集。几个实验已经进行了评估模型的性能与附加样本的包含。该模型仅在增强样本上从头开始训练,并在原始样本上进行测试。我们的增强方法已经使用各种指标进行了全面评估,包括准确性、精密度、召回率和f1分数。结果表明,该方法大大提高了识别率,有效地缓解了过拟合效应。FMCW 77 GHz、FMCW 24 GHz和IR- UWB 10 GHz数据集的精度分别为96.47%、94.27%和98.18%。研究结果表明,DWT可以丰富微多普勒训练样本,从而提高HAR性能。此外,该处理步骤可有效提高FMCW 77 GHz、FMCW 24 GHz和IR-UWB 10 GHz数据集的分类准确率,分别达到96.78%、96.32%和100%。
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Advanced Human Activity Recognition through Data Augmentation and Feature Concatenation of Micro-Doppler Signatures
Developing accurate classification models for radar-based Human Activity Recognition (HAR), capable of solving real-world problems, depends heavily on the amount of available data. In this paper, we propose a simple, effective, and generalizable data augmentation strategy along with preprocessing for micro-Doppler signatures to enhance recognition performance. By leveraging the decomposition properties of the Discrete Wavelet Transform (DWT), new samples are generated with distinct characteristics that do not overlap with those of the original samples. The micro-Doppler signatures are projected onto the DWT space for the decomposition process using the Haar wavelet. The returned decomposition components are used in different configurations to generate new data. Three new samples are obtained from a single spectrogram, which increases the amount of training data without creating duplicates. Next, the augmented samples are processed using the Sobel filter. This step allows each sample to be expanded into three representations, including the gradient in the x-direction (Dx), y-direction (Dy), and both x- and y-directions (Dxy). These representations are used as input for training a three-input convolutional neural network-long short-term memory support vector machine (CNN-LSTM-SVM) model. We have assessed the feasibility of our solution by evaluating it on three datasets containing micro-Doppler signatures of human activities, including Frequency Modulated Continuous Wave (FMCW) 77 GHz, FMCW 24 GHz, and Impulse Radio Ultra-Wide Band (IR-UWB) 10 GHz datasets. Several experiments have been carried out to evaluate the model's performance with the inclusion of additional samples. The model was trained from scratch only on the augmented samples and tested on the original samples. Our augmentation approach has been thoroughly evaluated using various metrics, including accuracy, precision, recall, and F1-score. The results demonstrate a substantial improvement in the recognition rate and effectively alleviate the overfitting effect. Accuracies of 96.47%, 94.27%, and 98.18% are obtained for the FMCW 77 GHz, FMCW 24 GHz, and IR- UWB 10 GHz datasets, respectively. The findings of the study demonstrate the utility of DWT to enrich micro-Doppler training samples to improve HAR performance. Furthermore, the processing step was found to be efficient in enhancing the classification accuracy, achieving 96.78%, 96.32%, and 100% for the FMCW 77 GHz, FMCW 24 GHz, and IR-UWB 10 GHz datasets, respectively.
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来源期刊
CiteScore
1.20
自引率
11.80%
发文量
69
期刊介绍: The International Journal of Electrical and Computer Engineering Systems publishes original research in the form of full papers, case studies, reviews and surveys. It covers theory and application of electrical and computer engineering, synergy of computer systems and computational methods with electrical and electronic systems, as well as interdisciplinary research. Power systems Renewable electricity production Power electronics Electrical drives Industrial electronics Communication systems Advanced modulation techniques RFID devices and systems Signal and data processing Image processing Multimedia systems Microelectronics Instrumentation and measurement Control systems Robotics Modeling and simulation Modern computer architectures Computer networks Embedded systems High-performance computing Engineering education Parallel and distributed computer systems Human-computer systems Intelligent systems Multi-agent and holonic systems Real-time systems Software engineering Internet and web applications and systems Applications of computer systems in engineering and related disciplines Mathematical models of engineering systems Engineering management.
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