无人机环境下实时目标检测的深度学习网络技术趋势

Jonghyeon Mun, Chaebong Sohn
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引用次数: 0

摘要

随着国防部最近发表的《国防创新4.0基本计划》,无人机作为人工智能、无人、自主系统的核心力量,其作用和作战范围正在扩大。因此,随着无人机承担各种任务,包括传递、分析和评估实时目标相关信息,实时目标检测技术的重要性得到了强调。最近深度学习的出现导致了计算机视觉领域的实质性进步,特别是在目标检测方面。基于深度学习的目标检测正在积极研究中,重点是适合嵌入式和移动环境(如无人机)的算法。本研究主要旨在开发基于深度学习的物体检测模型,以确保实时性能并准确识别物体的各种形状和大小。最近的目标检测模型分为骨干网络、颈部网络和头部网络。通过利用这三个网络组件,可以定制设计考虑,以满足无人机操作的要求。在本文中,我们研究了可以加载到无人机中进行实时目标检测的深度学习网络模型的技术趋势。因此,我们有助于加强无人机在军事行动中的有效操作,并支持研究和决策过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Technology trends in deep learning networks for real-time object detection in drone environment
With the recent announcement of the Defense Innovation 4.0 Basic Plan by the Ministry of National Defense, the role and operational scope of drones are expanding as a key force in AI-based, unmanned, and autonomous systems. Consequently, the significance of real-time object detection technology is emphasized as drones take on diverse missions, including delivering, analyzing, and assessing real-time, target-related information. The emergence of recent deep learning has led to substantial advancements in the field of computer vision, particularly in object detection. Deep learning-based object detection is actively being researched, with a focus on algorithms suited for embedded and mobile environments such as drones. This research predominantly aims to develop deep learning-based object detection models that ensure real-time performance and accurately identify objects’ various forms and sizes. Recent object-detection models have been categorized into backbone networks, neck networks, and head networks. By utilizing these three network components, design considerations can be tailored to fulfill the requirements of drone operations. In this paper, we investigate the technology trends of deep learning network models that can be loaded into drones for real-time object detection. Thus we contribute to strengthening effective drone operation in military operations and supporting research and decision-making processes.
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