基于改进SegNet神经网络和形态学相结合的变化检测

Bin Zhu, Hongmin Gao, Xin Wang, Mengxi Xu, Xiaobin Zhu
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引用次数: 12

摘要

通过对卫星遥感影像数据的分析,可以实现对同一区域内新增建筑物的识别,从而判断土地的利用情况。基于遥感图像的新建建筑物识别,涉及图像目标提取、语义分割和变化检测。其难点不仅在于如何识别不同时期遥感影像的变化,还在于如何将新增建筑与原有建筑区分开来。传统的基于数学建模的方法在识别效果和检测精度上都有待提高。SegNet神经网络是一种深度卷积神经网络。它在处理单幅图像的语义分割任务方面表现出良好的性能,但直接应用于建筑变化检测,准确率较低。仿真结果表明,改进的SegNet神经网络方法在2015年和2017年的同区域新增建筑检测效果中,与传统的SegNet网络相比,定量评价指标F1得分的准确率提高了8.6%。此外,针对变化检测结果会产生大量噪声的情况,采用改进的SegNet网络与图像形态学相结合的方法消除噪声,减少误判。仿真结果表明,F1指数在8.6%的基础上进一步提高了1.4%。
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Change Detection Based on the Combination of Improved SegNet Neural Network and Morphology
Through the analysis of satellite remote sensing image data, the identification of newly added buildings in the same area can be realized to judge the use of land. The identification of newly added buildings based on remote sensing images, involving image object extraction, semantic segmentation and change detection. The difficulty is not only to identify the changes of remote sensing images in different periods, but also to identify the newly added buildings with the original buildings. Both of the recognition effect and the detection precision of the traditional method based on mathematical modeling need to be improved. SegNet neural network is a kind of deep convolution neural network. It shows good performance in dealing with the task of semantic segmentation of single image, but it is directly applied to building change detection with low accuracy. The simulation results show that the improved SegNet neural network method improves the accuracy of the quantitative evaluation index F1 score by 8.6% compared with the conventional SegNet network in the newly added building detection effect in the same area in 2015 and 2017. In addition, the situation that the change detection result will produce a large number of noise, a combination of improved SegNet network and image morphological method is adopted to eliminate the noise and reduce the misjudgment. The simulation results show that the F1 index increased further by 1.4% on the basis of 8.6%.
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