基于unet深度学习的SAR图像建筑物检测方法

R. A. Emek, N. Demir
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引用次数: 6

摘要

摘要SAR图像与光学图像的不同之处在于它的图像属性是散射值而不是反射率。这使得SAR图像难以应用传统的目标检测方法。近年来,深度学习模型经常用于分割和目标检测目的。在这项研究中,我们研究了U-Net模型在从SAR和光学图像融合中进行建筑物检测方面的潜力。使用的数据集是Sentinel- 1 SAR和Sentinel-2多光谱图像,来自“SpaceNet 6多传感器全天候测绘”挑战。这些图像覆盖了荷兰鹿特丹120平方公里的区域。作为训练数据集,我们使用了20张900 × 900像素大小的HV偏振和光学图像贴片。计算损失值为0.4,精度为81%。
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BUILDING DETECTION FROM SAR IMAGES USING UNET DEEP LEARNING METHOD
Abstract. SAR images are different from the optical images in terms of image properties with the values of scattering instead of reflectance. This makes SAR images difficult to apply the traditional object detection methodologies. In recent years, deep learning models are frequently used in segmentation and object detection purposes. In this study, we have investigated the potential of U-Net models for building detection from SAR and optical image fusion. The datasets used are Sentinel 1 SAR and Sentinel-2 multispectral images, provided from ‘SpaceNet 6 Multi Sensor All-Weather Mapping’ challenge. These images cover an area of 120 km2 in Rotterdam, the Netherlands. As training datasets 20 pieces of 900 by 900 pixel sized HV polarized and optical image patches have been used together. The calculated loss value is 0.4 and the accuracy is 81%.
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