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Toward the Use of Deep Learning for Topographic Feature Extraction from High Resolution Optical Satellite Imagery

机译:致力于使用深度学习从高分辨率光学卫星影像中提取地形特征

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This paper introduces the exploitation of a convolutional neural network for the extraction of topographic features from high-resolution optical satellite imagery. A UNET based model was trained for seven feature classes of roads, buildings, waterbodies using two 3-band (RGB) images for a study site in Kingston (Canada). The trained model's accuracy was evaluated on eight tiles of 8000×8000 pixels using a confusion matrix, the overall accuracy and kappa. The results show overall accuracy varying between 90 % and 99 % and kappa varying between 0.48 and 0.98, with five of the eight tiles being over 0.85. The model generally produced accurate predictions, except for commercial and industrial buildings and for unpaved roads, which were under represented in the training data. The project provided perspective for the development of a training database for topographic feature extraction using deep learning and for expansion to the national scale.
机译:本文介绍了卷积神经网络的开发,以提取高分辨率光卫星图像的地形特征。在金斯敦(加拿大)的一项学习网站培训了七个特色道路,建筑物,水上级的道路,建筑物,水上级的七个特征课程的模型。使用混乱矩阵,整体精度和κA的8000×8000像素的八个瓷砖评估训练有素的模型的准确性。结果表明,总体精度在90%至99%之间,kappa在0.48和0.98之间变化,八个瓷砖中的五个超过0.85。该模型通常生产准确的预测,除了商业和工业建筑以及未铺砌的道路,在培训数据中代表。该项目提供了使用深度学习和扩展全国规模的地形特征提取的培训数据库的视角。

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