YOMO-Runwaynet: A Lightweight Fixed-Wing Aircraft Runway Detection Algorithm Combining YOLO and MobileRunwaynet

Drones Pub Date : 2024-07-18 DOI:10.3390/drones8070330
Wei Dai, Zhengjun Zhai, Dezhong Wang, Zhaozi Zu, Siyuan Shen, Xinlei Lv, Sheng Lu, Lei Wang
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Abstract

The runway detection algorithm for fixed-wing aircraft is a hot topic in the field of aircraft visual navigation. High accuracy, high fault tolerance, and lightweight design are the core requirements in the domain of runway feature detection. This paper aims to address these needs by proposing a lightweight runway feature detection algorithm named YOMO-Runwaynet, designed for edge devices. The algorithm features a lightweight network architecture that follows the YOMO inference framework, combining the advantages of YOLO and MobileNetV3 in feature extraction and operational speed. Firstly, a lightweight attention module is introduced into MnasNet, and the improved MobileNetV3 is employed as the backbone network to enhance the feature extraction efficiency. Then, PANet and SPPnet are incorporated to aggregate the features from multiple effective feature layers. Subsequently, to reduce latency and improve efficiency, YOMO-Runwaynet generates a single optimal prediction for each object, eliminating the need for non-maximum suppression (NMS). Finally, experimental results on embedded devices demonstrate that YOMO-Runwaynet achieves a detection accuracy of over 89.5% on the ATD (Aerovista Runway Dataset), with a pixel error rate of less than 0.003 for runway keypoint detection, and an inference speed exceeding 90.9 FPS. These results indicate that the YOMO-Runwaynet algorithm offers high accuracy and real-time performance, providing effective support for the visual navigation of fixed-wing aircraft.
YOMO-Runwaynet:结合 YOLO 和 MobileRunwaynet 的轻量级固定翼飞机跑道检测算法
固定翼飞机的跑道检测算法是飞机目视导航领域的热门话题。高精度、高容错性和轻量级设计是跑道特征检测领域的核心要求。为了满足这些需求,本文提出了一种针对边缘设备设计的轻量级跑道特征检测算法,名为 YOMO-Runwaynet。该算法采用轻量级网络架构,遵循 YOMO 推理框架,结合了 YOLO 和 MobileNetV3 在特征提取和运行速度方面的优势。首先,在 MnasNet 中引入轻量级注意力模块,并采用改进后的 MobileNetV3 作为骨干网络,以提高特征提取效率。然后,加入 PANet 和 SPPnet,以聚合多个有效特征层的特征。随后,为了减少延迟和提高效率,YOMO-Runwaynet 为每个对象生成一个单一的最优预测,从而消除了非最大抑制(NMS)的需要。最后,在嵌入式设备上的实验结果表明,YOMO-Runwaynet 在 ATD(Aerovista 跑道数据集)上的检测准确率超过 89.5%,跑道关键点检测的像素错误率低于 0.003,推理速度超过 90.9 FPS。这些结果表明,YOMO-Runwaynet 算法具有高精度和实时性,可为固定翼飞机的目视导航提供有效支持。
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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