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Human Fall Detection with Ultra-Wideband Radar and Adaptive Weighted Fusion. | LitMetric

Human Fall Detection with Ultra-Wideband Radar and Adaptive Weighted Fusion.

Sensors (Basel)

School of Electrical Engineering and Information Engineering, Lanzhou University of Technology, Lanzhou 730050, China.

Published: August 2024

AI Article Synopsis

  • This paper introduces a human fall classification system using the SE-Residual Concatenate Network (SE-RCNet), designed to differentiate between various types of falls in radar images.
  • The SE-RCNet employs special SE modules to enhance important features while reducing irrelevant ones, improving the overall accuracy of fall detection.
  • The system was tested on three radar image types and achieved impressive F1-scores, with a peak score of 98.1% after applying an adaptive weighted fusion method.

Article Abstract

To address the challenges in recognizing various types of falls, which often exhibit high similarity and are difficult to distinguish, this paper proposes a human fall classification system based on the SE-Residual Concatenate Network (SE-RCNet) with adaptive weighted fusion. First, we designed the innovative SE-RCNet network, incorporating SE modules after dense and residual connections to automatically recalibrate feature channel weights and suppress irrelevant features. Subsequently, this network was used to train and classify three types of radar images: time-distance images, time-distance images, and distance-distance images. By adaptively fusing the classification results of these three types of radar images, we achieved higher action recognition accuracy. Experimental results indicate that SE-RCNet achieved F1-scores of 94.0%, 94.3%, and 95.4% for the three radar image types on our self-built dataset. After applying the adaptive weighted fusion method, the F1-score further improved to 98.1%.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11359866PMC
http://dx.doi.org/10.3390/s24165294DOI Listing

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