Lightweight small target detection based on aerial remote sensing images

Muzi Li
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Abstract

With the upgrading of aviation space technology, the amount of information contained in remote sensing images in the aviation is gradually increasing, and the detection technology based on small targets has developed. For lightweight small targets, pixels per unit area contain more information than large targets, and their area is too small, which is easily overlooked by conventional detection models. To enhance the attention of such algorithms, this study first introduces a Control Bus Attention Mechanism (CBAM) in the fifth generation You Only Look Once (YOLOv5) algorithm to increase the algorithm’s attention to small targets and generate optimization algorithms. Then convolutional neural network is used to mark feature pixels of the optimization algorithm, eliminate redundant information, and generate fusion algorithm, which is used to generate redundant information with high similarity when the optimization algorithm surveys pixel blocks. The novelty of this study lies in using CBAM to improve YOLOv5 algorithm. CBAM module can extract important features from images by adaptively learning the channel and spatial attention of feature maps. By weighting the channel and spatial attention of the feature map, the network can pay more attention to important features and suppress irrelevant background information. This attention mechanism can help the network better capture the characteristics of small targets and improve the accuracy and robustness of detection. Embedding CBAM module into YOLOv5 detection network can enhance the network's perception of small targets. CBAM module can improve the expressive ability and feature extraction ability of the network without increasing the complexity of the network. By introducing CBAM module, YOLOv5 can better capture the characteristics of small targets in aerial remote sensing images, and improve the detection accuracy and recall rate. Finally, the proposed fusion algorithm is used for experiments on the Tiny-Person dataset and compared with the fifth, sixth, and seventh generations of You Only Look Once. When the fusion algorithm tests the target, the classification accuracy of Sea-person is 39 %, the classification accuracy of Earth-person is 31 %, and the probability of being predicted as the background is 56 % and 67 %, respectively. And the overall accuracy of this algorithm is 0.987, which is the best among the four algorithms. The experimental results show that the fusion algorithm proposed in the study has precise positioning for lightweight small targets and can achieve good application results in aerial remote sensing images.
基于航空遥感图像的轻量级小型目标探测
随着航空航天技术的提升,航空遥感图像所包含的信息量逐渐增加,基于小目标的探测技术也随之发展起来。对于轻量级的小目标来说,单位面积像素所包含的信息量比大目标要多,而且其面积太小,容易被传统的探测模型所忽略。为了提高此类算法的关注度,本研究首先在第五代 "你只看一次"(YOLOv5)算法中引入了控制总线关注机制(CBAM),以提高算法对小目标的关注度,并生成优化算法。然后利用卷积神经网络标记优化算法的特征像素,消除冗余信息,生成融合算法,用于优化算法勘测像素块时生成相似度高的冗余信息。本研究的新颖之处在于利用 CBAM 改进 YOLOv5 算法。CBAM 模块可以通过自适应学习特征图的通道和空间注意力来提取图像中的重要特征。通过对特征图的通道和空间注意力进行加权,网络可以更多地关注重要特征,抑制无关的背景信息。这种注意力机制可以帮助网络更好地捕捉小目标的特征,提高检测的准确性和鲁棒性。在 YOLOv5 检测网络中嵌入 CBAM 模块可以增强网络对小目标的感知能力。CBAM 模块可以在不增加网络复杂度的情况下提高网络的表达能力和特征提取能力。通过引入 CBAM 模块,YOLOv5 可以更好地捕捉航空遥感图像中的小目标特征,提高检测精度和召回率。最后,在 Tiny-Person 数据集上对所提出的融合算法进行了实验,并与第五代、第六代和第七代 "你只看一次 "进行了比较。当融合算法测试目标时,Sea-person 的分类准确率为 39%,Earth-person 的分类准确率为 31%,被预测为背景的概率分别为 56% 和 67%。该算法的总体准确率为 0.987,是四种算法中最好的。实验结果表明,本研究提出的融合算法对轻量级小目标具有精确定位的作用,在航空遥感图像中能取得良好的应用效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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