Semantic Segmentation for Change Detection in Satellite Imaging
Articles
Kürşat Kömürcü
Vilnius University, Lithuania
Linas Petkevicius
Vilnius University, Lithuania
Published 2024-05-13
https://doi.org/10.15388/LMITT.2024.8
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Keywords

Deep learning
semantic segmentation
change detection
satellite imagery
Vector Autoregression

How to Cite

Kömürcü, K. and Petkevicius, L. (2024) “Semantic Segmentation for Change Detection in Satellite Imaging”, Vilnius University Open Series, pp. 57–64. doi:10.15388/LMITT.2024.8.

Abstract

Change detection is a common and actual problem in the field of remote sensing. The classical approaches using raw pixel information are very sensitive to noise. In this study we propose the usage of additional semantic information for change detection. We use the semantic segmentation methods like geospatial Segment Anything Model and encoder based U-Net to evaluate the predictions and tracing the semantic information as well as raw information in change detection. Later the multidimensional time series data is used via the Vector Autoregression model to predict the future changes in the landscape. The observations which fall out of the prediction interval are considered as the changes in the landscape. The proposed method is evaluated on the dataset of the random locations across the Baltic region. The research is accompanied by the data and reproducible code at Github repository.

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