Semantic Image Segmentation for Building Detection in Urban Area with Aerial Photograph Image using U-Net Models

E. Irwansyah, Y. Heryadi, Alexander Agung Santoso Gunawan
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引用次数: 9

Abstract

Detecting building location distribution in an urban area has been a concern of city government in many developing countries as a basis for city planning and development. In recent years, deep learning has gained research attention as the most attractive approach to address classification in the remote sensing field. One application of deep learning is a semantic image segmentation method whose aim is to classify each pixel in the image into a predetermined set of labels. In this experiment, the objective of semantic image segmentation is building detection in urban areas using a deep learning model in which each image pixel is categorized into either building or non-building label. Based on experimentation using aerial photograph imagery of Pasar Minggu Sub-District, South Jakarta City District, DKI. Jakarta Province and UNet model achieved 0.83 average training accuracy and 0,87 testing accuracy
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基于U-Net模型的航拍图像语义分割用于城市建筑检测
在许多发展中国家,作为城市规划和发展的基础,探测城市区域内建筑物的位置分布一直是城市政府关注的问题。近年来,深度学习作为解决遥感领域分类问题的最具吸引力的方法受到了研究的关注。深度学习的一个应用是语义图像分割方法,其目的是将图像中的每个像素分类到预定的标签集中。在本实验中,语义图像分割的目标是使用深度学习模型在城市地区进行建筑物检测,其中每个图像像素被分类为建筑物或非建筑物标签。基于对雅加达市南区帕萨明谷街道航拍影像的实验。雅加达省和UNet模型的平均训练精度为0.83,测试精度为0.87
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