상세 보기
Development of a method for urban flooding detection using unstructured data and deep learing
- Lee, Haneul;
- Kim, Hung Soo;
- Kim, Soojun;
- Kim, Donghyun;
- Kim, Jongsung
SCOPUS
6초록
In this study, a model was developed to determine whether flooding occurred using image data, which is unstructured data. CNN-based VGG16 and VGG19 were used to develop the flood classification model. In order to develop a model, images of flooded and non-flooded images were collected using web crawling method. Since the data collected using the web crawling method contains noise data, data irrelevant to this study was primarily deleted, and secondly, the image size was changed to 224×224 for model application. In addition, image augmentation was performed by changing the angle of the image for diversity of image. Finally, learning was performed using 2,500 images of flooding and 2,500 images of non-flooding. As a result of model evaluation, the average classification performance of the model was found to be 97%. In the future, if the model developed through the results of this study is mounted on the CCTV control center system, it is judged that the respons against flood damage can be done quickly. © 2021 Korea Water Resources Association.
키워드
- 제목
- Development of a method for urban flooding detection using unstructured data and deep learing
- 저자
- Lee, Haneul; Kim, Hung Soo; Kim, Soojun; Kim, Donghyun; Kim, Jongsung
- 발행일
- 2021
- 유형
- Article
- 저널명
- Journal of Korea Water Resources Association
- 권
- 54
- 호
- 12
- 페이지
- 1233 ~ 1242