Intelligent Interpretation of High-resolution Remote Sensing Images based on Deep Learning

Bitong Huai, Han Liu, Guo Xie, Youmin Zhang
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Abstract

As an important task of intelligent interpretation research, the object detection of remote sensing images still has many problems to be solved. In this paper, aiming at the characteristics of small-sized object and complex background, in order to solve the problem of poor effect of existing object detection algorithms when applied to remote sensing images, an object detection model of remote sensing images based on the improved Faster R-CNN model is proposed. Based on the original Faster R-CNN model, the feature extraction network VGG16 is improved by designing a feature fusion module. In order to verify the effectiveness of the model in this paper, it is used to carry out experiments on NWPU VHR-10 and DOTA datasets, and mAP has reached 0.886 and 0.810 respectively, which was 6.9% and 11.6% higher than the original Faster R-CNN. The experimental results show that our method effectively improves the object detection effect of remote sensing images, and achieves good results in remote sensing images with small-sized object and complex background.
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基于深度学习的高分辨率遥感图像智能解译
作为智能判读研究的一项重要任务,遥感图像的目标检测仍有许多问题有待解决。本文针对目标体积小、背景复杂的特点,为解决现有目标检测算法应用于遥感图像时效果较差的问题,提出了一种基于改进Faster R-CNN模型的遥感图像目标检测模型。在原有Faster R-CNN模型的基础上,通过设计特征融合模块对特征提取网络VGG16进行改进。为了验证本文模型的有效性,利用该模型在NWPU VHR-10和DOTA数据集上进行了实验,mAP分别达到了0.886和0.810,比原来的Faster R-CNN分别提高了6.9%和11.6%。实验结果表明,该方法有效地提高了遥感图像的目标检测效果,在目标尺寸小、背景复杂的遥感图像中取得了较好的效果。
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