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2 "위성영상"
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AI Dataset for Road Detection using KOMPSAT Images
Hoonhee Lee, Han Oh
GEO DATA. 2022;4(1):43-48.   Published online March 31, 2022
DOI: https://doi.org/10.22761/DJ2022.4.1.005
  • 1,948 View
  • 55 Download
AbstractAbstract PDF
Information on shape and type of road present in an optical image of satellite is useful for digital mapping and monitoring of road changes. Processing and structuring optical image data collected from payloads mounted on KOMPSAT 3 and 3A can accelerate the development of road detection algorithms and the extraction of road information using them. In particular, if it is built with a learning dataset for AI (Artificial Intelligence) prepared to apply deep learning technology, the latest artificial intelligence technology in the field of computer science can be spun off to the field of satellite image-based road detection to attempt a wide range of analysis. Korea Aerospace Research Institute constructed an image dataset for AI learning using satellite optical images with Korean companies, and this paper explains the type and size of datasets along with examples of the use of the dataset. The established data can be used through the website, aihub.or.kr.
AI Training Dataset for Cloud Detection of KOMPSAT Images
Bo-Ram Kim, Han Oh
GEO DATA. 2020;2(2):56-62.   Published online December 30, 2020
DOI: https://doi.org/10.22761/DJ2020.2.2.008
  • 1,715 View
  • 62 Download
  • 1 Citations
AbstractAbstract PDF
Clouds that appear inevitably when acquiring optical satellite images hinder the interpretation of surface information, so removing them is a crucial procedure to increase the utilization of satellite images. Currently, for KOMPSAT (Korea Multi-purpose Satellite) images, only the cloud amount by visual measurement is proved for the entire scene and detailed cloud masks are not provided. Since cloud detection is a time-consuming task, we built a cloud dataset for KOMPSAT images so as to develop an algorithm that expedites the task with state-of-the-art artificial intelligent techniques. In the dataset, satellite images were selected from various regions considering that clouds have different characteristics depending on the region, and masks were classified into thin clouds, thick clouds, cloud shadows, and clear sky. The size of dataset is over 4,000 image/mask pairs by an image size of 1000x1000 and one of the largest among publicly available cloud datasets, as of this writing. The dataset is built by a government AI (artificial intelligent) training dataset building program and will be available through the website, aihub.or.kr.

Citations

Citations to this article as recorded by  
  • Cloud Detection Using a UNet3+ Model with a Hybrid Swin Transformer and EfficientNet (UNet3+STE) for Very-High-Resolution Satellite Imagery
    Jaewan Choi, Doochun Seo, Jinha Jung, Youkyung Han, Jaehong Oh, Changno Lee
    Remote Sensing.2024; 16(20): 3880.     CrossRef

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