One of the exceptional advantages of spaceborne remote sensors is their regular scanning of the Earth surface, resulting thus in Satellite Image Time Series (SITS), extremely useful to monitor natural or man-made phenomena on the ground. In this chapter, after providing a brief overview of the most recent methods proposed to process and/or analyze time series of remotely sensed data, we describe methods handling two issues: the unsupervised exploration of SITS and the reconstruction of multispectral images. In particular, we first present data mining methods for extracting spatiotemporal patterns in an unsupervised way and illustrate this approach on time series of displacement measurements derived from multitemporal InSAR images. Then we present two methods which aim to reconstruct multispectral images contaminated by the presence of clouds. The first one is based on a linear contextual prediction mode that reproduces the local spectro-temporal relationships characterizing a given tim...

Satellite Image Time Series: Mathematical Models for Data Mining and Missing Data Restoration / Méger, N.; Pasolli, E.; Rigotti, C.; Trouvé, E.; Melgani, F.. - STAMPA. - (2018), pp. 357-398. [10.1007/978-3-319-66330-2_9]

Satellite Image Time Series: Mathematical Models for Data Mining and Missing Data Restoration

E. Pasolli;F. Melgani
2018-01-01

Abstract

One of the exceptional advantages of spaceborne remote sensors is their regular scanning of the Earth surface, resulting thus in Satellite Image Time Series (SITS), extremely useful to monitor natural or man-made phenomena on the ground. In this chapter, after providing a brief overview of the most recent methods proposed to process and/or analyze time series of remotely sensed data, we describe methods handling two issues: the unsupervised exploration of SITS and the reconstruction of multispectral images. In particular, we first present data mining methods for extracting spatiotemporal patterns in an unsupervised way and illustrate this approach on time series of displacement measurements derived from multitemporal InSAR images. Then we present two methods which aim to reconstruct multispectral images contaminated by the presence of clouds. The first one is based on a linear contextual prediction mode that reproduces the local spectro-temporal relationships characterizing a given tim...
2018
Moser, Gabriele; Zerubia, Josiane
Mathematical Models for Remote Sensing Image Processing
Germany
Springer Science and Business Media Deutschland GmbH
978-3-319-66330-2
Méger, N.; Pasolli, E.; Rigotti, C.; Trouvé, E.; Melgani, F.
Satellite Image Time Series: Mathematical Models for Data Mining and Missing Data Restoration / Méger, N.; Pasolli, E.; Rigotti, C.; Trouvé, E.; Melgani, F.. - STAMPA. - (2018), pp. 357-398. [10.1007/978-3-319-66330-2_9]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/225745
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