首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >AN EXPLAINABLE CONVOLUTIONAL AUTOENCODER MODEL FOR UNSUPERVISED CHANGE DETECTION
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AN EXPLAINABLE CONVOLUTIONAL AUTOENCODER MODEL FOR UNSUPERVISED CHANGE DETECTION

机译:用于无监督变化检测的可解释的卷积AutoEncoder模型

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Transfer learning methods reuse a deep learning model developed for a task on another task. Such methods have been remarkably successful in a wide range of image processing applications. Following the trend, few transfer learning based methods have been proposed for unsupervised multi-temporal image analysis and change detection (CD). Inspite of their success, the transfer learning based CD methods suffer from limited explainability. In this paper, we propose an explainable convolutional autoencoder model for CD. The model is trained in: 1) an unsupervised way using, as the bi-temporal images, patches extracted from the same geographic location; 2) a greedy fashion, one encoder and decoder layer pair at a time. A number of features relevant for CD is chosen from the encoder layer. To build an explainable model, only selected features from the encoder layer is retained and the rest is discarded. Following this, another encoder and decoder layer pair is added to the model in similar fashion until convergence. We further visualize the features to better interpret the learned features. We validated the proposed method on a Landsat-8 dataset obtained in Spain. Using a set of experiments, we demonstrate the explainability and effectiveness of the proposed model.
机译:转移学习方法重用为另一个任务开发的深度学习模型。在各种图像处理应用中,这些方法在广泛的图像处理应用中取得了显着成功。在趋势之后,已经提出了很少的转移学习的方法,用于无监督的多时间图像分析和变化检测(CD)。对其成功的影响,基于转移的CD方法遭受了有限的解释性。在本文中,我们提出了一种可解释的CD卷积AutoEncoder模型。该模型培训:1)使用从同一地理位置中提取的贴片的无监督方式; 2)一次贪婪的时尚,一个编码器和解码器层对。从编码器层中选择与CD相关的许多功能。为了构建可说解释的模型,只保留了来自编码器层的选定功能,并且丢弃其余部分。在此之后,以类似的方式将另一个编码器和解码器层对添加到模型,直到收敛。我们进一步可视化功能以更好地解释学习功能。我们在西班牙获得的Landsat-8数据集中验证了该方法。使用一组实验,我们展示了所提出的模型的解释性和有效性。

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