Automatic Detection of Flood Using Remote Sensing Images
Author(s) -
Amith Chandrakant Chawan,
Vaibhav K Kakade,
Jagannath Jadhav
Publication year - 2020
Publication title -
journal of information technology and digital world
Language(s) - English
Resource type - Journals
ISSN - 2582-418X
DOI - 10.36548/jitdw.2020.1.002
Subject(s) - computer science , artificial intelligence , remote sensing , convolutional neural network , preprocessor , flood myth , segmentation , feature extraction , deep learning , computer vision , pattern recognition (psychology) , geology , geography , archaeology
Remote sensing imaging (RSI) technology has recently been identified as an effective photogrammetric data acquisition platform to rapidly provide high resolution images due to its profitability, its ability to fly at low altitude and the ability to analysis in dangerous areas. The various kinds of classification techniques are have been used for flood extent mapping for finding the flood affected region, but based on the color region based analysis the classified hazardous area has very complex. Due to over the above issues in this work there significant enhancements have appeared in the classification of remote sensing images using Contiguous Deep Convolutional Neural Network (CDCNN).In the flood detection system the four different kinds of process like preprocessing, segmentation, feature extraction and the Contiguous Deep Convolutional Neural Network (CDCNN) has been executed for identifying the flood defected region. This works also investigates and compare with the possible methods with the proposed CDCNN for accurately identified by the Classification details of the RSI
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