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Building Extraction in High Spatial Resolution Images Using Deep Learning Techniques

机译:使用深度学习技术在高空间分辨率图像中进行建筑物提取

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High spatial resolution images are processed in the object domain as the traditional pixel-based method processes individual pixels (layer by layer) and classifies them, thus ignoring the neighborhood or contextual features. Analysis in object domain includes three steps: segmenting the image into homogeneous regions/objects, extracting features and assigning class labels to each of these regions based on the extracted features. Object-based analysis of an image faced challenges such as identifying the appropriate scale for segmentation and incapability to capture complex features that a high resolution image entails. This paper aims to solve this challenge by using a deep learning technique called Region-based Convolutional Neural Networks (R-CNN). Faster R-CNN was used here for the extraction of buildings in satellite images. The dataset used for training and testing was WorldView-2 with spatial resolution of 0.46 m. The results obtained using faster R-CNN had classification accuracy of 99% with 2000 epochs whereas building extraction using support vector machine showed 88.3%. The results obtained clearly indicate that convolutional neural networks are better at extracting features and detecting objects in high resolution images.
机译:由于传统的基于像素的方法(逐层)处理各个像素并对它们进行分类,因此在对象域中处理高空间分辨率的图像,从而忽略了邻域或上下文特征。在对象域中的分析包括三个步骤:将图像分割成均匀的区域/对象,提取特征,并根据提取的特征为这些区域中的每个区域分配类别标签。基于图像的基于对象的分析面临挑战,例如确定适当的分割比例,以及无法捕获高分辨率图像所需要的复杂特征。本文旨在通过使用称为基于区域的卷积神经网络(R-CNN)的深度学习技术来解决这一挑战。此处使用更快的R-CNN提取卫星图像中的建筑物。用于训练和测试的数据集是WorldView-2,其空间分辨率为0.46 m。使用更快的R-CNN获得的结果在2000个时期内的分类精度为99%,而使用支持向量机进行的建筑物提取显示的结果为88.3%。所获得的结果清楚地表明,卷积神经网络在提取特征和检测高分辨率图像中的对象方面更胜一筹。

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