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 fash...

An explainable convolutional autoencoder model for unsupervised change detection / Bergamasco, Luca; Saha, Sudipan; Bovolo, Francesca; Bruzzone, Lorenzo. - In: INTERNATIONAL ARCHIVES OF THE PHOTOGRAMMETRY, REMOTE SENSING AND SPATIAL INFORMATION SCIENCES. - ISSN 2194-9034. - 43:2(2020), pp. 1513-1519. ( XXIV ISPRS Congress (2020 edition) Nice; France 15th June-20th June 2020) [10.5194/isprs-archives-XLIII-B2-2020-1513-2020].

An explainable convolutional autoencoder model for unsupervised change detection

Bergamasco, Luca;Saha, Sudipan;Bovolo, Francesca;Bruzzone, Lorenzo
2020-01-01

Abstract

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 fash...
2020
The International Archives of Photogrammetry, Remote Sensing and Spatial Information Sciences
Göttingen; Germany
International Society for Photogrammetry and Remote Sensing
Bergamasco, Luca; Saha, Sudipan; Bovolo, Francesca; Bruzzone, Lorenzo
An explainable convolutional autoencoder model for unsupervised change detection / Bergamasco, Luca; Saha, Sudipan; Bovolo, Francesca; Bruzzone, Lorenzo. - In: INTERNATIONAL ARCHIVES OF THE PHOTOGRAMMETRY, REMOTE SENSING AND SPATIAL INFORMATION SCIENCES. - ISSN 2194-9034. - 43:2(2020), pp. 1513-1519. ( XXIV ISPRS Congress (2020 edition) Nice; France 15th June-20th June 2020) [10.5194/isprs-archives-XLIII-B2-2020-1513-2020].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/274093
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