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Vehicle object detection in aerial scenes has important applications in both military and civilian fields. Recently, deep learning has shown clear advantages in object detection, and the detection performance has been continuously improved. However, these deep object detection algorithms rely on anchor-based approaches accompanied by complex convolutional operations. In this paper, we establish a lightweight aerial vehicle object detection algorithm based on the method of anchor-free. The anchor-free based object detection method effectively gets rid of the limitation of detection model capability by the size of fixed anchor box, which reduces the set of parameters and provides a more flexible solution space. In addition, the proposed lightweight object feature extraction network effectively reduces the computational cost of the model, while improving the feature extraction capability of small objects. Besides, we use channel stacking to improve the object feature extraction capability of the lightweight network, and introduce the attention mechanism in the detection model to improve the efficiency of resource utilization. We evaluate the proposed detection algorithm on both the public aerial dataset and our collected aerial dataset, and the results show that our algorithm has significant advantages over other detection algorithms in detection accuracy and efficiency. The proposed detection algorithm achieves 89.1% and 92.6% mAP on the Munich dataset and the created dataset, and the detection time for each image is 1.21s and 0.036s, respectively.
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Jiaquan Shen
Luoyang Normal University
Wangcheng Zhou
Ministry of Industry and Information Technology
Ningzhong Liu
Nanjing University of Aeronautics and Astronautics
IEEE Transactions on Intelligent Transportation Systems
Nanjing University of Aeronautics and Astronautics
Luoyang Normal University
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Shen et al. (Fri,) studied this question.
synapsesocial.com/papers/69d6876a63c393aa4d31af1e — DOI: https://doi.org/10.1109/tits.2022.3203715