基于YOLOV5的单级无人机检测与分类:拼接数据增强和PANet

Fardad Dadboud, Vaibhav Patel, Varun Mehta, M. Bolic, I. Mantegh
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引用次数: 22

摘要

结合IEEE AVSS 2021第四届小型无人机监视、检测和对抗技术国际研讨会,我们提出了一种基于yolov5的小型无人机目标检测模型,用于小型无人机的检测和分类。YOLOV5利用PANet颈部和马赛克增强,有助于提高对小物体的检测。我们将挑战数据集与一个公开可用的无人机空对空数据集相结合,该数据集具有复杂的背景和照明条件,用于训练模型。该方法在整个数据集中随机抽取10%的数据集上实现了0.96 Recall, $0.98 mAP_{0.5}$和$0.71 mAP_{0.5:0.95}$。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Single-Stage UAV Detection and Classification with YOLOV5: Mosaic Data Augmentation and PANet
In Drone-vs-Bird Detection Challenge in conjunction with the 4th International Workshop on Small-Drone Surveillance, Detection and Counteraction Techniques at IEEE AVSS 2021, we proposed a YOLOV5-based object detection model for small UAV detection and classification. YOLOV5 leverages PANet neck and mosaic augmentation which help in improving detection of small objects. We have combined the challenge dataset with one of the publicly available UAV air to air dataset having complex background and lighting conditions for training the model. The proposed approach achieved 0.96 Recall, $0.98 mAP_{0.5}$, and $0.71 mAP_{0.5:0.95}$ on the 10% randomly sampled dataset from the whole dataset.
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