Abstract

Radar is widely used in human activity recognition (HAR). The radar-based HAR algorithms can be roughly categorized into the feature map-based and the point cloud-based. Between the two, the point cloud-based algorithms are more suitable for multi-person activity recognition (MPAR) tasks due to the spatial properties of point clouds, and are therefore increasingly attracting attentions. However, most existing point cloud-based algorithms make decisions by utilizing either Doppler or coordinate features of point clouds, which are not sufficient to characterize the activity; the remaining algorithms have a large randomness in extracting both features. Neither of these algorithms can fully exploit the advantage of feature fusion, which is the key to recognition performance. To address this shortcoming, this paper proposes a novel MPAR algorithm. First, a feature mapping approach is proposed and defined in equation form, the Doppler, range, azimuth, and elevation features of the point clouds are calculated and accumulated sequentially, so we can obtain the four time-domain feature maps. Second, with the four feature maps as inputs, a four-channel CNN classification model with channel attention is trained for MPAR tasks. Datasets of multi-person activities are collected respectively under the indoor circumstance and aquatic circumstance using the millimeter-wave multiple-input-multiple-output (MIMO) radar platform. The dataset-based evaluation performance shows that the proposed algorithm achieves accuracy results of 96.09% for the indoor-MPAR task and 93.97% for the aquatic-MPAR task, and outperforms three conventional point cloud-based algorithms in terms of the overall MPAR accuracy, the generalization ability to the aquatic activity recognition, and the robustness of distance and headcount.

Full Text
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