Novel classification approach for predicting the center of tropical cyclone tc
Loading...
Date
item.page.authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Over the past centuries, the impact of the cyclone on human lives
newlineand property is huge. Depending on the geographical origin, most cyclone is
newlinecalled Tropical cyclone since it forms over tropical seas. Since the diameter of
newlinetropical cyclones varies between 100 and 2000 km, it is causing huge damage.
newlineThe winds will be whirling around the central eye which is to be found to
newlineidentify the exact location of the tropical cyclone. A method called Content-
newlineBased Image Retrieval (CBIR) can help in searching and retrieving the image
newlinefrom a vast database. Briefly, Image retrieval is a technique for searching a
newlinebig image library for the most visually comparable images to a given query
newlineimage. The main benefit of this method is that it requires very little human
newlineinteraction. In our research, we aim to identify the eye of the cyclone to locate
newlinethe cyclone position precisely from the database. The most difficult aspect of
newlinethis procedure is retrieving the needed images from a vast database with the
newlinehighest degree of precision and in the shortest amount of time possible. As a
newlineresult, an effective image retrieval system is necessary to provide a userfriendly
newlinesolution for retrieving relevant images from a big database in a short
newlineamount of time with high accuracy. In this study, we enhance the design of
newlinethe Content Based Image Retrieval (CBIR) system as the use of the CBIR
newlinesystem automatically improves the resultant images with high quality and we
newlinefurther use different image-processing techniques to process the raw cyclone
newlineimage. With the growing platform of satellite images, image retrieval is an
newlineintriguing field for scholars to investigate. The suggested work is presented
newlineusing the MATLAB programming language. However, when estimating the
newlineiv suggested classifier, many factors are taken into account. In this research,
newlinemany current classifiers such as Neural Network (NN), Convolution Neural
newlineNetwork-Whale Optimization Classifier (CNN-WOC), and Convolution
newlineNeural Network-Elevated Whale Optimization Classifier (CNN-EWOC) are
newlineutilized to