复杂背景条件下多模型深度学习无人机检测与跟踪

Kim-Phuong Phung, Thai-Hoc Lu, Trung-Thanh Nguyen, Ngoc-Long Le, Huu-Hung Nguyen, Van‐Phuc Hoang
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引用次数: 2

摘要

最近流行的四轴飞行器布局的无人机正在威胁公共安全和个人隐私。即使在室内条件下,无人机也能悬停并进行复杂的机动,配备摄像机并能够携带危险物质,无人机可以真正成为安全威胁,特别是对脆弱的组织。因此,检测和跟踪安全区域的无人机是监控系统的紧迫任务。本文设计了一种结合多种深度学习和计算机视觉技术的无人机实时检测与跟踪系统:1)用于检测无人机的Yolo-v4模型和2)用于跟踪无人机的视觉模型。此外,我们通过将现有数据集与我们收集的图像混合,收集并标记了一个更大的无人机数据集。我们在该数据集上评估了三种用于无人机检测的深度学习模型,得出Yolo-V4模型的检测性能最高,AP = 34.63%。将该检测模型与现有的视觉跟踪模块相结合,使用普通PC机在700米左右的不同背景下,可以将无人机的跟踪速度提高到20fps以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-model Deep Learning Drone Detection and Tracking in Complex Background Conditions
The recent popularity of drones with quadcopter layouts is threatening public safety and personal privacy. With the ability to hover and perform complex maneuvers even in indoor conditions, equipped with video cameras as well as capable of carrying hazardous materials, drones can truly become a security threat, especially to vulnerable organizations. Therefore, detecting and tracking drones in secured areas poses an urgent task for the surveillance system. In this paper, we design a real-time drone detection and tracking system with the combination of multiple deep learning and computer vision techniques: 1) Yolo-v4 model for detecting drones and 2) visual models for tracking drones. Besides, we have collected and labeled a larger drone dataset by mixing the existing datasets with our collected images. We evaluated three deep learning models for drone detection on this dataset and acquired the Yolo-V4 model to be the highest detection performance with AP = 34.63%. Combining this detection model and the existing visual tracking modules can boost the drone tracking up to more than 20fps for different backgrounds at around 700m by using an usual PC without GPU.
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