A New Method of Different Neural Network Depth and Feature Map Size on Remote Sensing Small Target Detection

Yaming Cao, Zhen Yang, Chen Gao
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引用次数: 1

Abstract

Convolutional neural networks (CNNs) have shown strong learning capabilities in computer vision tasks such as classification and detection. Especially with the introduction of excellent detection models such as YOLO (V1, V2 and V3) and Faster R-CNN, CNNs have greatly improved detection efficiency and accuracy. However, due to the special angle of view, small size, few features, and complicated background, CNNs that performs well in the ground perspective dataset, fails to reach a good detection accuracy in the remote sensing image dataset. To this end, based on the YOLO V3 model, we used feature maps of different depths as detection outputs to explore the reasons for the poor detection rate of small targets in remote sensing images by deep neural networks. We also analyzed the effect of neural network depth on small target detection, and found that the excessive deep semantic information of neural network has little effect on small target detection. Finally, the verification on the VEDAI dataset shows, that the fusion of shallow feature maps with precise location information and deep feature maps with rich semantics in the CNNs can effectively improve the accuracy of small target detection in remote sensing images.
不同神经网络深度和特征图大小的遥感小目标检测新方法
卷积神经网络(cnn)在分类和检测等计算机视觉任务中显示出强大的学习能力。特别是随着YOLO (V1, V2, V3)和Faster R-CNN等优秀检测模型的引入,cnn的检测效率和准确率得到了极大的提高。然而,由于视角特殊、尺寸小、特征少、背景复杂等原因,cnn在地面透视数据集中表现良好,但在遥感图像数据集中却无法达到较好的检测精度。为此,我们基于YOLO V3模型,采用不同深度的特征图作为检测输出,探讨深度神经网络对遥感图像中小目标检测率较差的原因。我们还分析了神经网络深度对小目标检测的影响,发现神经网络中过多的深度语义信息对小目标检测影响不大。最后,在VEDAI数据集上的验证表明,在cnn中融合具有精确位置信息的浅层特征图和具有丰富语义的深层特征图,可以有效提高遥感图像中小目标检测的精度。
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