Abstract

Distinguishing between humans and common animals through a wall is necessary for facilitating successful rescue of survivors and enhancing the confidence of rescuers in post-disaster search and rescue operations. However, few existing solutions are available with only dogs considered in this scenario. This poses an issue in ensuring the recognition accuracy involving different animal species. This work proposed a novel multiscale residual attention network for distinguishing between stationary humans and common animals under a through-wall condition based on ultra-wideband radar, which is yet to be performed by existing research using deep learning. Humans, dogs, cats, rabbits, and no target data are collected and distinguished. The overall architecture of the proposed method differed from conventional deep learning methods as it is constructed by parallel 3 × 3 and 5 × 5 kernels incorporated with the residual attention learning mechanism. The effect of the slow-time dimension on the classification performance is analyzed, thereby producing an optimal input size. The overall F1-score of the proposed network can reach a high value of 0.9064 and the recognition accuracy of human targets can reach 0.983 satisfying the requirements for post-disaster rescue. Then, the effectiveness and advancement of the three components of the overall network architecture are validated by ablation studies. Finally, the proposed method is compared with three state-of-the-art methods. Comparison results indicate that the proposed method achieve a better performance. The network and its results are envisioned to be applied in various practical situations, such as earthquake rescue and intelligent homecare.

Highlights

  • The rapid development in ultra-wideband (UWB) radar life-detection technology [1]–[5] has attracted the interest of researchers in civilian and military applications mainly due to its advantage in penetrability of obstacles, robustness to weather conditions, and protection of visual privacy

  • This paper aims to distinguish stationary humans and common animals under a through-wall condition using UWB radar

  • This study addressed the issue of distinguishing stationary humans, dogs, cats, rabbits, and no targets under a throughwall condition using UWB radar by proposing a novel multiscale attention network

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Summary

Introduction

The rapid development in ultra-wideband (UWB) radar life-detection technology [1]–[5] has attracted the interest of researchers in civilian and military applications mainly due to its advantage in penetrability of obstacles, robustness to weather conditions, and protection of visual privacy. Mir. operations [6], gesture recognitions [7], person identification [8], target imaging [9], human tracking [10], etc. The distinction between humans and animals using UWB radar is garnering attention as it can obtain significant target information, thereby accurately guiding followup operations. W.D Van Eeden et al [11] combined the Gaussian mixture model and hidden Markov model to distinguish slow-moving animals from human targets to detect potential livestock thieves and poachers in nature reserves and farmlands.

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