Mob-YOLO:一种轻型无人机目标检测方法

Yilin Liu, Datong Liu, Benkuan Wang, Bo Chen
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引用次数: 1

摘要

随着无人机在各个领域的应用越来越广泛,多架无人机协同执行任务已成为未来重要的发展趋势。为了避免多架无人机在飞行过程中相互碰撞,确保飞行安全,必须能够实现高精度、实时的机载无人机目标检测。本文提出了一种无人机目标检测方法Mob-YOLO。在高性能模型YOLOv4的基础上,利用轻量级卷积神经网络MobileNetv2取代原有的YOLOv4主干CSPDarknet53,缩小模型尺寸,简化计算操作。同时,为了解决网络替换后对小型无人机目标精度不高的问题,本工作还设计了一个多尺度特征提取与融合分支,通过多尺度特征融合扩大目标检测器的接受场。利用自建的无人机数据集对该方法进行了评估。结果表明,mobo - yolo能够满足对无人机目标的精确实时监控,且模型尺寸小,可部署在机载嵌入式处理器上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mob-YOLO: A Lightweight UAV Object Detection Method
With the increasing use of Unmanned Aerial Vehicles (UAVs) in various fields, the coordinated execution of tasks by multiple UAVs has become an important development trend in the future. To avoid the collision of multiple UAVs with each other during flight and ensure flight safety, it is essential to be able to achieve high-precision, real-time airborne UAV object detection. In this work, a UAV object detection method called Mob-YOLO is proposed. Based on the high-performance model YOLOv4, MobileNetv2, a lightweight convolutional neural network, is used to replace the original YOLOv4 backbone CSPDarknet53 for model size reduction and computing operation simplification. Meanwhile, to solve the issue of poor accuracy for small UAV objects after network replacement, this work also designs a multi-scale feature extraction and fusion branch to expand the receptive field of the object detector by multi-scale feature fusion. The proposed method is evaluated using a self-built UAV dataset. The results demonstrate that Mob-YOLO can satisfy accurate real-time monitoring of UAV objects, and the model size is tiny, which can be used for deployment on airborne embedded processors.
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