无人机低延迟航拍图像目标检测

Kai Feng, Weixing Li, Jun Han, Feng Pan
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引用次数: 2

摘要

基于视觉的目标检测在无人机的安全和监视中有着广泛的应用。同时,要求目标探测器具有低时延和易于在嵌入式机载平台上部署的特点。为了解决这些问题,我们提出了一种基于YOLOv3和PANet算法的PA-YOLOv3航空图像目标检测器,该检测器可部署在嵌入式平台上。PA-YOLOv3模型采用双塔结构,提高了网络特征融合阶段的特征提取和表达能力。此外,我们提出了一种平衡剪枝方法,以减少模型大小和剪枝过程中不同特征层的不平衡。经过平衡剪枝后,模型的延迟和大小明显减小。最后,利用TensorRT技术在嵌入式平台上对模型进行部署和量化,并将模型应用于无人机系统上进行测试。在VisDrone2018数据集和真实场景上进行了综合实验。实验结果表明,PA-YOLOv3 boost的推理速度约[公式:见文]模型修剪和量化,同时保持较高的检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low-Latency Aerial Images Object Detection for UAV
Visual-based object detection has large applications in security and surveillance for unmanned aerial vehicles (UAVs). Meanwhile, the object detectors are required of low-latency and easy to be deployed on embedded onboard platforms. Aiming to address these problems, we present a PA-YOLOv3 aerial images object detector based on YOLOv3 and PANet algorithms, which can be deployed on embedded platforms. The PA-YOLOv3 model uses the dual-tower structure to improve the feature extraction and expression capabilities in feature fusion stage of the network. Besides, we propose a balanced pruning method to reduce the model size and the imbalance of different feature layers during pruning. After balanced pruning, the latency and size of the model are significantly decreased. Finally, we deploy and quantify the model on the embedded platform with TensorRT technology and apply the model on the UAV system for testing. The comprehensive experiments are executed on VisDrone2018 dataset and real-world scenarios. The experimental results show the inference speed of PA-YOLOv3 boost of about [Formula: see text] model pruning and quantization, while maintaining high detection accuracy.
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