Publication | Open Access
Image Segmentation Methods for Flood Monitoring System
46
Citations
28
References
2020
Year
EngineeringSegmentation ResultsSegmentation MethodsDisaster DetectionImage Sequence AnalysisImage AnalysisData SciencePattern RecognitionEdge DetectionImage ProcessingMachine VisionGeographyFlood Monitoring SystemHydrologyComputer VisionImage Segmentation TechniquesRemote SensingTexture AnalysisImage Segmentation
Flood disasters are considered annual disasters in Malaysia due to their consistent occurrence. They are among the most dangerous disasters in the country. Lack of data during flood events is the main constraint to improving flood monitoring systems. With the rapid development of information technology, flood monitoring systems using a computer vision approach have gained attention over the last decade. Computer vision requires an image segmentation technique to understand the content of the image and to facilitate analysis. Various segmentation algorithms have been developed to improve results. This paper presents a comparative study of image segmentation techniques used in extracting water information from digital images. The segmentation methods were evaluated visually and statistically. To evaluate the segmentation methods statistically, the dice similarity coefficient and the Jaccard index were calculated to measure the similarity between the segmentation results and the ground truth images. Based on the experimental results, the hybrid technique obtained the highest values among the three methods, yielding an average of 97.70% for the dice score and 95.51% for the Jaccard index. Therefore, we concluded that the hybrid technique is a promising segmentation method compared to the others in extracting water features from digital images.
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