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Classification of High Resolution Remote Sensing Images using Deep Learning Techniques

机译:使用深度学习技术对高分辨率遥感影像进行分类

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High Resolution Satellite Images are widely used in many applications. Since such images are useful to provide more useful information about the details about the every regions around the world. In this work, transfer learning is used efficiently for the feature extraction from a pretrained Convolutional Neural Network(CNN) model which is used for training in the classification task. Using transfer learning the classification yielded a better accurate results. The experiments are carried out on two high resolution remote sensing satellite images such as UC Merced LandUse and SceneSat Datasets. The pre-trained CNN used here is VGG-16 which is trained on millions of Image-Net Dataset. The proposed method yielded a classification accuracy of 93% in UC Merced LandUse Dataset and in SceneSat Dataset it is about 84%. This proposed method yielded a better precision of 0.93 and 0.86 in UC Merced LandUse Dataset and in SceneSat Dataset respectively.
机译:高分辨率卫星图像被广泛用于许多应用中。由于此类图像可用于提供有关全球每个区域的详细信息的更有用的信息。在这项工作中,转移学习被有效地用于从预训练的卷积神经网络(CNN)模型中提取特征,该模型用于分类任务中的训练。使用转移学习,分类产生了更好的准确结果。实验是在两个高分辨率的遥感卫星图像上进行的,例如UC Merced LandUse和SceneSat数据集。此处使用的预先训练的CNN是VGG-16,它已在数百万个Image-Net数据集上进行了训练。该方法在UC Merced LandUse数据集中的分类精度为93%,在SceneSat数据集中约为84%。该方法在UC Merced LandUse数据集和SceneSat数据集中分别产生了0.93和0.86的更好的精度。

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