A light-weight model to generate NDWI from Sentinel-1
Saleh Sakib Ahmed, Saifur Rahman Jony, Md. Toufikuzzaman, Saifullah, Sayed, Rashed Uz Zzaman, Sara Nowreen, M. Sohel Rahman

TL;DR
This paper introduces a lightweight deep learning model that accurately generates NDWI from Sentinel-1 images, overcoming cloud cover issues and enabling water body detection in challenging conditions.
Contribution
The paper presents the first robust model for generating NDWI directly from Sentinel-1 data, expanding remote sensing capabilities under cloud cover and nighttime conditions.
Findings
High accuracy of 0.9134 in NDWI prediction
AUC of 0.8656 indicating strong classification performance
R2 score of 0.4984 for NDWI regression
Abstract
The use of Sentinel-2 images to compute Normalized Difference Water Index (NDWI) has many applications, including water body area detection. However, cloud cover poses significant challenges in this regard, which hampers the effectiveness of Sentinel-2 images in this context. In this paper, we present a deep learning model that can generate NDWI given Sentinel-1 images, thereby overcoming this cloud barrier. We show the effectiveness of our model, where it demonstrates a high accuracy of 0.9134 and an AUC of 0.8656 to predict the NDWI. Additionally, we observe promising results with an R2 score of 0.4984 (for regressing the NDWI values) and a Mean IoU of 0.4139 (for the underlying segmentation task). In conclusion, our model offers a first and robust solution for generating NDWI images directly from Sentinel-1 images and subsequent use for various applications even under challenging…
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Taxonomy
TopicsInfrared Target Detection Methodologies · Inertial Sensor and Navigation · Target Tracking and Data Fusion in Sensor Networks
