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http://dx.doi.org/10.30693/SMJ.2022.11.1.17

Research Trends and Datasets Review using Satellite Image  

Kim, Se Hyoung (아주대학교, 경영대학 e-비즈니스 학과)
Chae, Jung Woo (아주대학교, 경영대학 e-비즈니스 학과)
Kang, Ju Young (아주대학교, 경영대학 e-비즈니스 학과)
Publication Information
Smart Media Journal / v.11, no.1, 2022 , pp. 17-30 More about this Journal
Abstract
Like other computer vision research trends, research using satellite images was able to achieve rapid growth with the development of GPU-based computer computing capabilities and deep learning methodologies related to image processing. As a result, satellite images are being used in various fields, and the number of studies on how to use satellite images is increasing. Therefore, in this paper, we will introduce the field of research and utilization of satellite images and datasets that can be used for research using satellite images. First, studies using satellite images were collected and classified according to the research method. It was largely classified into a Regression-based Approach and a Classification-based Approach, and the papers used by other methods were summarized. Next, the datasets used in studies using satellite images were summarized. This study proposes information on datasets and methods of use in research. In addition, it introduces how to organize and utilize domestic satellite image datasets that were recently opened by AI hub. In addition, I would like to briefly examine the limitations of satellite image-related research and future trends.
Keywords
Satellite Images; Dataset: Review;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
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