Small Objects Detection in Satellite Images Using Deep Learning

Ahmad Mansour, W. Hussein, Ehab Said
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引用次数: 6

Abstract

Using the deep Convolution Neural Networks (CNNs) for Object detection in satellite images accomplish promising results, especially for large objects. While Small objects detection in the same spatial resolution images does not attain the same results. For instance, vehicle detection in high-resolution satellite images, the targeted object maybe existed in an area that does not exceed 15 square pixels, which will not make a sufficient effect in the deeper layers. In addition; the interfering with the surrounding background, noise effect, the neighboring object's shadows, and various vehicle colors. In the proposed paper, an analysis study is performed to evaluate the effect of changing the object size on the detection results. A separate resampling algorithm is applied to the input test images to change its size - bear in mind the built-in detection model resampling layer-, which results in changing the object size, and accordingly extends the object impact in deep layers. Through Transfer Learning, the Faster R-CNN pre-trained object detection model with Inception-V2is applied to submeter satellite images and passenger vehicles as the target objects. The Experimental results show the change in detection accuracy with the change of the object size.
基于深度学习的卫星图像小目标检测
利用深度卷积神经网络(cnn)对卫星图像中的目标进行检测,特别是对大型目标的检测,取得了令人满意的效果。而在相同空间分辨率的图像中,小目标检测却得不到相同的结果。例如,在高分辨率卫星图像中的车辆检测中,目标物体可能存在于不超过15平方像素的区域,这在更深的图层中不会产生足够的效果。除了;干扰周围的背景,噪音的影响,周围物体的阴影,和各种车辆的颜色。在本文中,进行了一项分析研究,以评估改变目标尺寸对检测结果的影响。对输入的测试图像采用单独的重采样算法来改变其大小(考虑到内置的检测模型重采样层),从而改变对象大小,从而扩展了深层对象的影响。通过迁移学习,将以inception - v2为目标对象的Faster R-CNN预训练目标检测模型应用于亚米级卫星图像和乘用车。实验结果表明,检测精度随目标尺寸的变化而变化。
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