用于无人机航空图像的轻量级物体检测网络

Lin Tang, Shunyong Zhou, Xinjie Wang
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摘要

为了解决航空图像目标检测领域存在的检测算法不完善、网络模型复杂度高、算法部署困难等问题。本文基于 YOLOv7-tiny 算法,设计了一种轻量级的无人机航空图像目标检测网络。网络中引入了部分卷积 PConv,改进了特征提取模块 ELAN,减少了卷积的计算量和特征提取过程中模型参数的数量,从而解决了模型轻量化的问题。优化网络的特征融合部分,提高网络对小目标的特征提取能力。同时,将原网络中的大目标检测层替换为航空图像中的小目标检测层,并在骨干网络中嵌入关注机制,解决了航空图像中检测算法不完善的问题。改进了网络的损失函数,使检测网络生成的预测帧与真实帧在回归过程中相互匹配,从而改进了网络的训练过程。在公开数据集 VisDrone2019 数据集上的实验结果表明,与 YOLOv7-tiny 算法相比,所提模型的检测精度提高了 0.7%,召回率 R 提高了 2.2%,F1 值提高了 1.6%,平均检测精度均值提高了 2.3%,参数数量减少了 52.1%。此外,图像检测速度 FPS 达到 66/f.s-1,满足了航空图像检测模型检测的实时性要求,为无人机航空图像检测领域提供了一种研究思路。
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A Lightweight Object Detection Network for UAV Aerial Images
In order to solve the problems of poor detection algorithms, high network model complexity, and difficult deployment of algorithms in the field of aerial image target detection. In this paper, based on YOLOv7-tiny algorithm, a lightweight target detection network for UAV aerial images is designed. Partial convolutional PConv is introduced into the network, and the feature extraction block ELAN is improved, which reduces the computational volume of convolution and the number of model parameters in the feature extraction process, thus solving the problem of model lightweight. The feature fusion part of the network is optimal to improve the feature extraction ability of the network for small targets. At the same time, the large target detection layer in the original network is replaced with the small target detection layer in the aerial images, and the attention mechanism is embedded in the backbone network, which solves the problem of imperfect detection algorithms in aerial images. The loss function of the network is improved so that the prediction frames generated by the detection network and the truth frames match each other in the regression process, thus improving the training process of the network. The experimental results on the publicly available dataset VisDrone2019 dataset show that compared with the YOLOv7-tiny algorithm, the detection accuracy of the proposed model is improved by 0.7%, the recall R is improved by 2.2%, the F1 value is improved by 1.6%, the average detection accuracy mean is improved by 2.3%, and the number of parameters is reduced by 52.1%. Moreover, the image detection speed FPS reaches 66/f.s-1, which meets the real-time requirements of the aerial image detection model detection, and provides a research idea for the field of UAV aerial image detection.
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