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Learning Deep Features for Classification of Typical Ecological Environmental Elements in High-Resolution Remote Sensing Images

机译:学习高分辨率遥感影像中典型生态环境要素分类的深层特征

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Ecological environmental elements are greatly related to both humans and nature. The rapid development of remote sensing technology has provided us more and more high-resolution remote sensing images for monitoring these elements timely and objectively. However, it has been a great challenge to recognize these elements from such images due to their diversity and complexity. In this paper, a classification approach of ecological environmental elements based on deep learning features of objects is proposed. At first, a deep convolutional neural network (DCNN) is trained for discriminating different ecological environmental elements. To extract deep features of irregular-shaped regions, sub-images are clipped from each region and used to represent the corresponding region. Then, deep features of these sub-images are extracted by the trained DCNN. After that, the softmax classifier is used to predict class probabilities of all sub-images. The class of one region is determined by considering the class probabilities of its sub-images according to the "winner-takes-all" strategy. Finally, the thematic maps of ecological environmental elements are achieved. The proposed approach is evaluated by the classification experiments on a test set of typical ecological environmental elements in high-resolution remote sensing images, and the classification accuracy reaches to 98.44%. Moreover, the classification accuracy on irregular-shaped regions also reaches to 96.77%. These results have testified the effectiveness of the proposed approach.
机译:生态环境要素与人与自然息息相关。遥感技术的飞速发展为我们提供了越来越多的高分辨率遥感影像,用于及时,客观地监测这些要素。但是,由于这些元素的多样性和复杂性,从这些图像中识别这些元素一直是一个巨大的挑战。本文提出了一种基于对象深度学习特征的生态环境元素分类方法。首先,训练深度卷积神经网络(DCNN)来区分不同的生态环境元素。为了提取不规则形状区域的深层特征,从每个区域中裁剪子图像,并将其用于表示相应的区域。然后,由经过训练的DCNN提取这些子图像的深层特征。之后,将softmax分类器用于预测所有子图像的分类概率。通过根据“赢者通吃”策略考虑其子图像的分类概率来确定一个区域的分类。最后,获得了生态环境要素专题图。通过对高分辨率遥感影像中典型生态环境要素测试集的分类实验,对所提方法进行了评估,分类精度达到98.44 \%。此外,不规则形状区域的分类精度也达到了96.77%。这些结果证明了该方法的有效性。

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