Human Multi-Activities Classification Using mmWave Radar: Feature Fusion in Time-Domain and PCANet.
Yier LinHaobo LiDaniele FaccioPublished in: Sensors (Basel, Switzerland) (2024)
This study introduces an innovative approach by incorporating statistical offset features, range profiles, time-frequency analyses, and azimuth-range-time characteristics to effectively identify various human daily activities. Our technique utilizes nine feature vectors consisting of six statistical offset features and three principal component analysis network (PCANet) fusion attributes. These statistical offset features are derived from combined elevation and azimuth data, considering their spatial angle relationships. The fusion attributes are generated through concurrent 1D networks using CNN-BiLSTM. The process begins with the temporal fusion of 3D range-azimuth-time data, followed by PCANet integration. Subsequently, a conventional classification model is employed to categorize a range of actions. Our methodology was tested with 21,000 samples across fourteen categories of human daily activities, demonstrating the effectiveness of our proposed solution. The experimental outcomes highlight the superior robustness of our method, particularly when using the Margenau-Hill Spectrogram for time-frequency analysis. When employing a random forest classifier, our approach outperformed other classifiers in terms of classification efficacy, achieving an average sensitivity, precision, F1, specificity, and accuracy of 98.25%, 98.25%, 98.25%, 99.87%, and 99.75%, respectively.
Keyphrases
- machine learning
- deep learning
- endothelial cells
- induced pluripotent stem cells
- big data
- randomized controlled trial
- pluripotent stem cells
- electronic health record
- systematic review
- climate change
- metabolic syndrome
- artificial intelligence
- type diabetes
- skeletal muscle
- convolutional neural network
- radiation therapy
- adipose tissue
- data analysis