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Iterative feature mapping network for detecting multiple changes in multi-source remote sensing images

机译:用于检测多源遥感图像中多个变化的迭代特征映射网络

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摘要

Owing to the rapid development of remote sensing technology, various types of data can be easily acquired at present. However, it has become an important but more challenging task for effectively highlighting changes occurring on the land surface from these available data. In this paper, we propose an iterative feature mapping network learning framework for identifying multiple changes with focus on multi-source images, which are often obtained from sensors with different imaging modalities. Firstly, high-level and robust feature representations are extracted from multi-source images via unsupervised feature learning. Then, on this basis, an iterative feature mapping network is established to transform these features into a common high-dimensional feature space. It aims to learn more discriminative features by shrinking the difference between the paired features of unchanged positions while enlarging that of changed ones. Note that the network parameters are learned by optimizing a well-designed objective function, and the whole learning process is fully unsupervised. Finally, based on a hierarchical tree for clustering analysis, all possible change classes can be detected accurately. In addition, the proposed framework is found to be also suitable for change detection in homogeneous images. The impressive experimental results obtained over different types of remote sensing images demonstrate the effectiveness and robustness of the proposed model.
机译:由于遥感技术的飞速发展,目前可以方便地获取各种类型的数据。但是,从这些可用数据有效地突出显示在陆地表面发生的变化,这已经成为一项重要但更具挑战性的任务。在本文中,我们提出了一种迭代特征映射网络学习框架,该框架可用于识别多个变化,重点是多源图像,这些图像通常是从具有不同成像方式的传感器获得的。首先,通过无监督的特征学习从多源图像中提取高级和鲁棒的特征表示。然后,在此基础上,建立迭代特征映射网络,以将这些特征转换为公共的高维特征空间。它旨在通过缩小未更改位置的配对特征之间的差异,同时扩大已更改位置的配对特征之间的差异,来学习更多区分功能。请注意,通过优化设计良好的目标函数可以学习网络参数,并且整个学习过程完全不受监督。最后,基于用于聚类分析的层次树,可以准确检测所有可能的更改类别。另外,发现所提出的框架也适合于均质图像中的变化检测。在不同类型的遥感图像上获得的令人印象深刻的实验结果证明了所提出模型的有效性和鲁棒性。

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