Retrieval of Similar Evolution Patterns from Satellite Image Time Series

Technological evolution in the remote sensing domain has allowed the acquisition of large archives of satellite image time series (SITS) for Earth Observation. In this context, the need to interpret Earth Observation image time series is continuously increasing and the extraction of information from...

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Main Authors: Anamaria Radoi, Corneliu Burileanu
Format: Article
Language:English
Published: MDPI AG 2018-12-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/8/12/2435
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spelling doaj-4f4c04373da14137941d0f647ecf37772020-11-24T21:23:00ZengMDPI AGApplied Sciences2076-34172018-12-01812243510.3390/app8122435app8122435Retrieval of Similar Evolution Patterns from Satellite Image Time SeriesAnamaria Radoi0Corneliu Burileanu1Faculty of Electronics, Telecommunications and Information Technology, University Politehnica of Bucharest, Bulevardul Iuliu Maniu 1-3, Bucharest 061071, RomaniaFaculty of Electronics, Telecommunications and Information Technology, University Politehnica of Bucharest, Bulevardul Iuliu Maniu 1-3, Bucharest 061071, RomaniaTechnological evolution in the remote sensing domain has allowed the acquisition of large archives of satellite image time series (SITS) for Earth Observation. In this context, the need to interpret Earth Observation image time series is continuously increasing and the extraction of information from these archives has become difficult without adequate tools. In this paper, we propose a fast and effective two-step technique for the retrieval of spatio-temporal patterns that are similar to a given query. The method is based on a query-by-example procedure whose inputs are evolution patterns provided by the end-user and outputs are other similar spatio-temporal patterns. The comparison between the temporal sequences and the queries is performed using the Dynamic Time Warping alignment method, whereas the separation between similar and non-similar patterns is determined via Expectation-Maximization. The experiments, which are assessed on both short and long SITS, prove the effectiveness of the proposed SITS retrieval method for different application scenarios. For the short SITS, we considered two application scenarios, namely the construction of two accumulation lakes and flooding caused by heavy rain. For the long SITS, we used a database formed of 88 Landsat images, and we showed that the proposed method is able to retrieve similar patterns of land cover and land use.https://www.mdpi.com/2076-3417/8/12/2435pattern recognitiondynamic time warpingmaximum likelihood criterionsimilarity measuremultitemporal datamultispectral information
collection DOAJ
language English
format Article
sources DOAJ
author Anamaria Radoi
Corneliu Burileanu
spellingShingle Anamaria Radoi
Corneliu Burileanu
Retrieval of Similar Evolution Patterns from Satellite Image Time Series
Applied Sciences
pattern recognition
dynamic time warping
maximum likelihood criterion
similarity measure
multitemporal data
multispectral information
author_facet Anamaria Radoi
Corneliu Burileanu
author_sort Anamaria Radoi
title Retrieval of Similar Evolution Patterns from Satellite Image Time Series
title_short Retrieval of Similar Evolution Patterns from Satellite Image Time Series
title_full Retrieval of Similar Evolution Patterns from Satellite Image Time Series
title_fullStr Retrieval of Similar Evolution Patterns from Satellite Image Time Series
title_full_unstemmed Retrieval of Similar Evolution Patterns from Satellite Image Time Series
title_sort retrieval of similar evolution patterns from satellite image time series
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2018-12-01
description Technological evolution in the remote sensing domain has allowed the acquisition of large archives of satellite image time series (SITS) for Earth Observation. In this context, the need to interpret Earth Observation image time series is continuously increasing and the extraction of information from these archives has become difficult without adequate tools. In this paper, we propose a fast and effective two-step technique for the retrieval of spatio-temporal patterns that are similar to a given query. The method is based on a query-by-example procedure whose inputs are evolution patterns provided by the end-user and outputs are other similar spatio-temporal patterns. The comparison between the temporal sequences and the queries is performed using the Dynamic Time Warping alignment method, whereas the separation between similar and non-similar patterns is determined via Expectation-Maximization. The experiments, which are assessed on both short and long SITS, prove the effectiveness of the proposed SITS retrieval method for different application scenarios. For the short SITS, we considered two application scenarios, namely the construction of two accumulation lakes and flooding caused by heavy rain. For the long SITS, we used a database formed of 88 Landsat images, and we showed that the proposed method is able to retrieve similar patterns of land cover and land use.
topic pattern recognition
dynamic time warping
maximum likelihood criterion
similarity measure
multitemporal data
multispectral information
url https://www.mdpi.com/2076-3417/8/12/2435
work_keys_str_mv AT anamariaradoi retrievalofsimilarevolutionpatternsfromsatelliteimagetimeseries
AT corneliuburileanu retrievalofsimilarevolutionpatternsfromsatelliteimagetimeseries
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