A Hybrid Deep Learning Model for UAVs Detection in Day and Night Dual Visions

Alam Noor, Kai Li, Adel Ammar, A. Koubâa, Bilel Benjdira, E. Tovar
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引用次数: 1

Abstract

Unmanned Aerial Vehicle (UAV) detection for public safety protection is becoming a critical issue in non-fly zones. There are plenty of attempts of the UAV detection using single stream (day or night vision). In this paper, we propose a new hybrid deep learning model to detect the UAV s in day and night visions with a high detection precision and accurate bounding box localization. The proposed hybrid deep learning model is developed with cosine annealing and re-thinking transformation to improve the detection precision and accelerate the training convergence. To validate the hybrid deep learning model, real-world experiments are conducted outdoor in daytime and nighttime, where a surveillance video camera on the ground is set up for capturing the UAV. In addition, the UAV-Catch open database is adopted for offline training of the proposed hybrid model, which enriches training datasets and improves the detection precision. The experimental results show that the proposed hybrid deep learning model achieves 65 % in terms of the mean average detection precision given the input videos in day and night visions.
基于混合深度学习的无人机昼夜双视觉检测模型
在禁飞区,针对公共安全保护的无人机(UAV)检测已成为一个关键问题。有大量的无人机检测使用单流(白视或夜视)的尝试。本文提出了一种新的混合深度学习模型,该模型具有较高的检测精度和精确的边界盒定位。该混合深度学习模型采用余弦退火和重新思考转换,提高了检测精度,加快了训练收敛速度。为了验证混合深度学习模型,在白天和夜间的户外进行了真实世界的实验,在地面上设置了一个监控摄像机来捕捉无人机。此外,采用UAV-Catch开放数据库对所提出的混合模型进行离线训练,丰富了训练数据集,提高了检测精度。实验结果表明,该混合深度学习模型在给定白天和夜视输入视频的情况下,平均检测精度达到65%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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