首页|Deep Convolutional Network Based Machine Intelligence Model for Satellite Cloud Image Classification

Deep Convolutional Network Based Machine Intelligence Model for Satellite Cloud Image Classification

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As a huge number of satellites revolve around the earth,a great probability exists to observe and determine the change phenomena on the earth through the analysis of satellite images on a real-time basis.Therefore,classifying satellite images plays strong assistance in remote sensing communities for predicting tropical cyclones.In this article,a classification approach is proposed using Deep Convolutional Neural Network(DCNN),comprising numerous layers,which extract the features through a downsampling process for classifying satellite cloud images.DCNN is trained marvelously on cloud images with an impressive amount of prediction accuracy.Delivery time decreases for testing images,whereas prediction accuracy increases using an appropriate deep convolutional network with a huge number of training dataset instances.The satellite images are taken from the Meteorological & Oceanographic Satellite Data Archival Centre,the organization is responsible for availing satellite cloud images of India and its subcontinent.The proposed cloud image classification shows 94%prediction accuracy with the DCNN framework.

satellite imagessatellite image classificationcyclone predictionDeep Convolutional Neural Network(DCNN)featureslayersdown-sampling process

Kalyan Kumar Jena、Sourav Kumar Bhoi、Soumya Ranjan Nayak、Ranjit Panigrahi、Akash Kumar Bhoi

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Department of Computer Science and Engineering,Parala Maharaja Engineering College,Berhampur 761003,India

Amity School of Engineering and Technology,Amity University,Uttar Pradesh 201303,India

Department of Computer Applications,Sikkim Manipal Institute of Technology,Sikkim Manipal University,Sikkim 737102,India

Directorate of Research,Sikkim Manipal University,Gangtok,Sikkim 737102,India

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Parala Maharaja Engineering College(Govt.),Berhampur,India

2023

大数据挖掘与分析(英文版)

大数据挖掘与分析(英文版)

CSCDEI
ISSN:
年,卷(期):2023.6(1)
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