Computer Vision Techniques for Military Surveillance Drones

H. Ahmad, Muhammad Farhan, Umer Farooq
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Abstract

Commercial unmanned aerial vehicles (UAVs), also referred to as drones, have proliferated recently, raising concerns about security threats and the need for effective countermeasures. To address these concerns, various technologies have been explored, including radar, acoustics, and RF signal analysis. However, computer vision, particularly deep learning approaches, has emerged as a robust and widely used method for autonomous drone identification. The goal of this research is to create an autonomous drone identification and surveillance system that makes use of a mix of static wide-angle cameras and a lower-angle camera placed on a revolving turret. To optimize memory and processing time, we suggested a novel multi-frame DL identification model. In this approach, the frames captured by the turret's magnified camera are stacked on top of the frames from the wide-angle still camera. Utilizing this technique, we can create an efficient pipeline that conducts initial identification of small-sized aerial invaders on the primary picture plane and identification on the expanded image plane at the same time. This approach significantly reduces the computational burden associated with detection algorithms, making it more resource-efficient. Furthermore, we present the complete system architecture, which includes DL classification frameworks, tracking algorithms, and other essential components. By integrating these elements, we create a comprehensive solution for drone identification and tracking. The system leverages the power of deep learning to accurately classify and track drones in real-time, enabling prompt response and mitigating potential security threats. Overall, this research offers a novel and effective approach to autonomously identify and track drones using computer vision and deep learning techniques. By combining static and dynamic camera perspectives and employing a multi-frame detection method, we provide a resource-efficient solution for drone identification. This work contributes to the ongoing efforts in enhancing security measures against potential drone-related risks
军用监视无人机的计算机视觉技术
商用无人驾驶飞行器(uav),也被称为无人机,最近激增,引发了对安全威胁的担忧和有效对策的必要性。为了解决这些问题,已经探索了各种技术,包括雷达、声学和射频信号分析。然而,计算机视觉,特别是深度学习方法,已经成为一种强大而广泛使用的自主无人机识别方法。这项研究的目标是创建一个自主无人机识别和监视系统,该系统利用静态广角摄像机和放置在旋转炮塔上的低角度摄像机的混合。为了优化内存和处理时间,我们提出了一种新的多帧深度学习识别模型。在这种方法中,由炮塔的放大相机捕获的帧堆叠在广角静止相机的帧之上。利用该技术,我们可以建立一个高效的管道,在主像面上对小型空中入侵者进行初始识别,同时在扩展像面上进行识别。这种方法大大减少了与检测算法相关的计算负担,使其更具资源效率。此外,我们提出了完整的系统架构,其中包括深度学习分类框架,跟踪算法和其他重要组件。通过整合这些元素,我们创建了无人机识别和跟踪的综合解决方案。该系统利用深度学习的力量,实时准确分类和跟踪无人机,实现快速响应,减轻潜在的安全威胁。总体而言,本研究提供了一种新颖有效的方法,利用计算机视觉和深度学习技术自主识别和跟踪无人机。通过结合静态和动态摄像机视角,采用多帧检测方法,我们为无人机识别提供了一种资源高效的解决方案。这项工作有助于加强针对潜在无人机相关风险的安全措施
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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