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Rapid Airplane Detection in Remote Sensing Images Based on Multilayer Feature Fusion in Fully Convolutional Neural Networks

机译:全卷积神经网络中基于多层特征融合的遥感图像快速飞机检测

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摘要

To address the issues encountered when using traditional airplane detection methods, including the low accuracy rate, high false alarm rate, and low detection speed due to small object sizes in aerial remote sensing images, we propose a remote sensing image airplane detection method that uses multilayer feature fusion in fully convolutional neural networks. The shallow layer and deep layer features are fused at the same scale after sampling to overcome the problems of low dimensionality in the deep layer and the inadequate expression of small objects. The sizes of candidate regions are modified to fit the size of the actual airplanes in the remote sensing images. The fully connected layers are replaced with convolutional layers to reduce the network parameters and adapt to different input image sizes. The region proposal network shares convolutional layers with the detection network, which ensures high detection efficiency. The simulation results indicate that, when compared to typical airplane detection methods, the proposed method is more accurate and has a lower false alarm rate. Additionally, the detection speed is considerably faster and the method can accurately and rapidly complete airplane detection tasks in aerial remote sensing images.
机译:为了解决传统飞机检测方法遇到的问题,包括航空遥感图像中物体尺寸小,准确率低,误报率高,检测速度低等问题,我们提出了一种使用多层飞机的遥感图像飞机检测方法。卷积神经网络中的特征融合。采样后,将浅层和深层特征以相同比例融合,以解决深层维数低和小对象表达不足的问题。修改候选区域的大小以适合遥感图像中实际飞机的大小。用卷积层代替完全连接的层,以减少网络参数并适应不同的输入图像大小。区域提议网络与检测网络共享卷积层,确保了较高的检测效率。仿真结果表明,与典型的飞机检测方法相比,该方法更加准确,误报率较低。另外,检测速度相当快,并且该方法可以准确且快速地完成航空遥感图像中的飞机检测任务。

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