EA-DINO:基于 DINO 的空域无人机探测改进方法

Hao Cai, Jinhong Zhang, Jianlong Xu
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引用次数: 0

摘要

近年来,无人机流量的增加和潜在的未经授权的监视凸显了对无人机检测技术进步的迫切需求。尽管深度学习技术突飞猛进,大大改进了物体检测任务,但空对空无人机(UAV)检测仍面临巨大挑战。复杂的背景、捕获图像中无人机的小尺寸以及飞行姿势和角度的变化等挑战给传统的深度学习方法带来了巨大困难,这主要是因为传统的卷积神经网络架构在辨别动态变化背景下的精细细节方面存在固有的局限性。为了应对这些挑战,本研究引入了基于增强聚合(EA)和 DINO 的新型深度学习网络 EA-DINO。该网络在 DINO 的基础上进行了一系列改进。首先,用 Swin 变压器取代了主干网,并集成了代理注意力。其次,在网络架构中加入了 EA 特征金字塔网络。实验评估表明,在空对空无人机探测复杂性的背景下,EA-DINO 模型在 Det-Fly 数据集上实现了 96.6% 的 $mAP_{50}$,与基线 DINO 模型相比提高了 8.3%。与其他主流模型相比,这一改进是值得注意的,说明了所提出的模型在应对空对空无人机探测挑战方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EA-DINO: Improved Method for Unmanned Aerial Vehicle Detection in Airspace Based on DINO
In recent years, the increase in drone traffic and the potential for unauthorized surveillance has underscored the urgent need for technological advances in drone detection. Despite the rapid advancements in deep learning that have significantly improved object detection tasks, air-to-air unmanned aerial vehicle (UAV) detection continues to pose significant challenges. Challenges such as complex backgrounds, small size of UAVs in captured images, and variations in flight poses and angles pose significant difficulties for traditional deep learning approaches, mainly because of the inherent limitations of conventional convolutional neural network architectures in discriminating fine details against dynamically changing backdrops. To address these challenges, this study introduces EA-DINO, a new deep learning network based on enhanced aggregation (EA) and DINO. The network incorporates a series of improvements over DINO. First, the backbone is replaced with a Swin transformer, and agent attention is integrated. Second, an EA feature pyramid network is added to the network architecture. Experimental evaluations demonstrate that, in the context of air-to-air UAV detection complexities, the EA-DINO model achieves an $mAP_{50}$ of 96.6\% on the Det-Fly dataset, representing an improvement of 8.3\% over the baseline DINO model. This improvement is noteworthy compared with other mainstream models, illustrating the effectiveness of the proposed model in addressing the challenges of air-to-air UAV detection.
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