OIL SPILL DETECTION TECHNIQUE WITH AUTOMATIC UPDATING USING DEEP LEARNING AND OIL SPILL INDEX

Title
OIL SPILL DETECTION TECHNIQUE WITH AUTOMATIC UPDATING USING DEEP LEARNING AND OIL SPILL INDEX
Author(s)
Shin, Dae Woon; Yang, Chan Su; Choi, Won Jun
KIOST Author(s)
Shin, Dae Woon(신대운)Yang, Chan Su(양찬수)Choi, Won Jun(최원준)
Alternative Author(s)
신대운; 양찬수; 최원준
Publication Year
2023-07-17
Abstract
This paper presents a novel approach for detecting oil spills, employing two distinct methods.
The first method involves utilizing an Oil Spill Index (OSI) that analyzes spectral band information, while the second method utilizes a Deep Learning (DL) segmentation model.
The outcomes of both methods are then combined to generate training data, and this iterative process is repeated to update the oil spill DL model.
The training data used in this approach are obtained from multiple remote sensing platforms including optical and SAR satellite imagery.
By employing this proposed method, it is anticipated that high-quality and comprehensive training datasets will be generated, enabling the DL model to perform effectively.
ISSN
0000-0000
URI
https://sciwatch.kiost.ac.kr/handle/2020.kiost/44443
Bibliographic Citation
IGARSS 2023, pp.4019 - 4022, 2023
Publisher
IEEE
Type
Conference
Language
English
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