We present an assessment of stepwise co-registration procedures applied to multitemporal SAR datasets. Images are connected in pairs through a minimum spanning tree structure, obtained by adopting a distance measure which is a function of the expected co-registration quality. Experiments have been performed on a test dataset by a) directly estimating the (a posteriori) co-registration quality over all possible image combinations, b) using an a priori model inspired by similar models for the multitemporal InSAR coherence, with parameters obtained experimentally, c) using the same a priori model with first-guess parameters. Performances were evaluated by analyzing the amplitude inverse coefficient of variation distribution over the co-registered image stacks obtained by the three procedures above. Results show that, although the best coupling strategy depends on the particular dataset and is thus difficult to model via general rules, a nonnegligible improvement in the performance of persistent scatterers interferometry techniques can be obtained by adopting stepwise approaches based on a priori models for the expected co-registration quality, rather than using a single acquisition as master
Assessment of Multitemporal DInSAR Stepwise Processing / Refice, A.; Bovenga, F.; Nutricato, R.; Chiaradia, Maria Teresa. - (2004), pp. 3876-3879. (Intervento presentato al convegno IEEE International Geoscience and Remote Sensing Symposium, IGARSS '04 tenutosi a Anchorage, AK nel September 20-24, 2004) [10.1109/IGARSS.2004.1369970].
Assessment of Multitemporal DInSAR Stepwise Processing
CHIARADIA, Maria Teresa
2004-01-01
Abstract
We present an assessment of stepwise co-registration procedures applied to multitemporal SAR datasets. Images are connected in pairs through a minimum spanning tree structure, obtained by adopting a distance measure which is a function of the expected co-registration quality. Experiments have been performed on a test dataset by a) directly estimating the (a posteriori) co-registration quality over all possible image combinations, b) using an a priori model inspired by similar models for the multitemporal InSAR coherence, with parameters obtained experimentally, c) using the same a priori model with first-guess parameters. Performances were evaluated by analyzing the amplitude inverse coefficient of variation distribution over the co-registered image stacks obtained by the three procedures above. Results show that, although the best coupling strategy depends on the particular dataset and is thus difficult to model via general rules, a nonnegligible improvement in the performance of persistent scatterers interferometry techniques can be obtained by adopting stepwise approaches based on a priori models for the expected co-registration quality, rather than using a single acquisition as masterI documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.