基于YOLOv5模型的无人机自动车辆检测

A. Panthakkan, N. Valappil, S. Al-Mansoori, Hussain Al-Ahmad
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引用次数: 0

摘要

无人驾驶飞行器(UAV)对移动车辆的检测已成为交通控制、监视和军事应用的一个重要研究领域。挑战在于保持最小的计算复杂度,同时保证系统的实时性。无人机车辆检测的应用包括交通参数估计、违规检测、车牌读取和停车场监控。本研究采用单阶段检测模型YOLOv5,开发了一种基于深度神经模型的高速公路无人机车辆检测系统。在本系统中,结合最优池化方法和密集拓扑方法,提出了几种适合于鸟瞰视角下小型车辆识别的临时策略,实现了实时检测和高精度检测。倾斜航拍照片的方向可以提高系统的有效性。命中率、准确度和精度值等指标用于评估所提出的混合模型的性能,并将性能与其他最先进的算法进行比较。
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AI based Automatic Vehicle Detection from Unmanned Aerial Vehicles (UAV) using YOLOv5 Model
Unmanned aerial vehicle (UAV) detection of moving vehicles is becoming into a significant study area in traffic control, surveillance, and military applications. The challenge arises in keeping minimal computational complexity allowing the system to be real-time as well. Applications of vehicle detection from UAVs include traffic parameter estimation, violation detection, number plate reading, and parking lot monitoring. The one stage detection model, YOLOv5 is used in this research work to develop a deep neural model-based vehicle detection system on highways from UAVs. In our system, several improvised strategies are put forth that are appropriate for small vehicle recognition under an aerial view angle which can accomplish real-time detection and high accuracy by incorporating an optimal pooling approach and dense topology method. Tilting the orientation of aerial photographs can improve the system's effectiveness. Metrics like hit rate, accuracy, and precision values are used to assess the performance of the proposed hybrid model, and performance is compared to that of other state-of-the-art algorithms.
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