Department of Electrical and Computer Engineering, The University of Auckland, Auckland 1010, New Zealand.
Faculty of Information Engineering, University of Shandong Ying Cai, Jinan 250104, China.
Sensors (Basel). 2023 Apr 10;23(8):3873. doi: 10.3390/s23083873.
Device-free indoor identification of people with high accuracy is the key to providing personalized services. Visual methods are the solution but they require a clear view and good lighting conditions. Additionally, the intrusive nature leads to privacy concerns. A robust identification and classification system using the mmWave radar and an improved density-based clustering algorithm along with LSTM are proposed in this paper. The system leverages mmWave radar technology to overcome challenges posed by varying environmental conditions on object detection and recognition. The point cloud data are processed using a refined density-based clustering algorithm to extract ground truth in a 3D space accurately. A bi-directional LSTM network is employed for individual user identification and intruder detection. The system achieved an overall identification accuracy of 93.9% and an intruder detection rate of 82.87% for groups of 10 individuals, demonstrating its effectiveness.
无需设备的室内人员高精度识别是提供个性化服务的关键。视觉方法是解决方案,但需要清晰的视野和良好的照明条件。此外,其侵入性本质引发了隐私问题。本文提出了一种使用毫米波雷达和改进的基于密度的聚类算法以及 LSTM 的稳健识别和分类系统。该系统利用毫米波雷达技术克服了物体检测和识别中因环境条件变化而带来的挑战。点云数据使用经过改进的基于密度的聚类算法进行处理,以在 3D 空间中准确提取地面实况。双向 LSTM 网络用于进行个体用户识别和入侵者检测。该系统在 10 人一组的情况下实现了 93.9%的总体识别准确率和 82.87%的入侵者检测率,证明了其有效性。