Presentation + Paper
12 September 2021 Multi-scale attention guided recurrent neural network for deformation map forecasting
Author Affiliations +
Abstract
Deformation map prediction is a critical tool to foresee signs of abnormal events. Such forecasting facilitates quick countermeasure to avoid undesirable conditions. This work presents a novel recurrent neural network to forecast time-series deformation maps from InSAR data. Our proposed recurrent network employs a multi-scale attention mechanism to identify vital temporal features that influences subsequent deformation maps. We have evaluated our model on volcanic monitoring data using the Micronesia islands (Canary and Cape Verde archipelagos) Sentinel-1 imagery acquired between 2015 and 2018. The proposed method achieves minimal prediction error compared to the observed deformation values, suggesting the high reliability of our approach. The experimental results indicate the superiority of the proposed method in forecasting deformation maps with high accuracy compared to existing state-of-the-art approaches. Various ablation studies were conducted to study and validate the effectiveness of the multi-scale attention mechanism for deformation map forecasting.
Conference Presentation
© (2021) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Ram Prabhakar K., Veera Harikrishna Nukala, Madhumitha Nayak, Jayavardhana Gubbi, and Balamuralidhar Purushothaman "Multi-scale attention guided recurrent neural network for deformation map forecasting", Proc. SPIE 11862, Image and Signal Processing for Remote Sensing XXVII, 118620L (12 September 2021); https://doi.org/10.1117/12.2600144
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KEYWORDS
Neural networks

Interferometric synthetic aperture radar

Synthetic aperture radar

Feature extraction

Network architectures

Data modeling

Remote sensing

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