One of the major limitations of passive sensors is their high sensitivity to weather conditions during the image acquisition process. The resulting images are frequently subject to the presence of clouds, which makes the image partly useless for assessing landscape properties. The common approach to cope with this problem attempts to remove the clouds by substituting them with cloud-free estimations. The cloud removal problem can be viewed as an image reconstruction/restoration issue, in which it is aimed at recovering an original scene from degraded or missing observations. Two cloud removal approaches are detailed and discussed in this chapter. The first one is a single-channel method for the reconstruction in a sequence of temporal optical images. Given a contaminated image of the sequence, each area of missing measurements is recovered by means of a contextual prediction process that reproduces the local spectro-temporal relationships. The second approach exploits the Compressive S...
Recent Methods for Reconstructing Missing Data in Multispectral Satellite Imagery / Melgani, Farid; Mercier, G.; Lorenzi, Luca; Pasolli, Edoardo. - 11:(2016), pp. 221-234. (Intervento presentato al convegno Forum of Mathematics for Industry 2014 tenutosi a Fukuoka, Japan nel 27-31, October, 2014) [10.1007/978-4-431-55342-7_19].
Recent Methods for Reconstructing Missing Data in Multispectral Satellite Imagery
Melgani, Farid;Lorenzi, Luca;Pasolli, Edoardo
2016-01-01
Abstract
One of the major limitations of passive sensors is their high sensitivity to weather conditions during the image acquisition process. The resulting images are frequently subject to the presence of clouds, which makes the image partly useless for assessing landscape properties. The common approach to cope with this problem attempts to remove the clouds by substituting them with cloud-free estimations. The cloud removal problem can be viewed as an image reconstruction/restoration issue, in which it is aimed at recovering an original scene from degraded or missing observations. Two cloud removal approaches are detailed and discussed in this chapter. The first one is a single-channel method for the reconstruction in a sequence of temporal optical images. Given a contaminated image of the sequence, each area of missing measurements is recovered by means of a contextual prediction process that reproduces the local spectro-temporal relationships. The second approach exploits the Compressive S...| File | Dimensione | Formato | |
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