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Convolutional Neural Network for Satellite Image Classification

机译:卷积神经网络的卫星图像分类

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Multimedia applications and processing is an exciting topic, and it is a key of many applications of artificial intelligent like video summarization, image retrieval or image classification. A convolutional neural networks have been successfully applied on multimedia approaches and used to create a system able to handle the classification without any human's interactions. In this paper, we produce effective methods for satellite image classification that are based on deep learning and using the convolutional neural network for features extraction by using AlexNet, VGG19, GoogLeNet and Resnet50 pretraining models. The Resnet50 model achieves a promising result than other models on three different dataset SAT4, SAT6 and UC Merced Land. The accuracy of classification of this model for UC Merced Land dataset is 98%, for SAT4 is 95.8%, and the result for SAT6 is 94.1%.
机译:多媒体应用和处理是一个令人兴奋的话题,它是人工智能的许多应用(如视频摘要,图像检索或图像分类)的关键。卷积神经网络已成功应用于多媒体方法,并用于创建无需任何人为干预即可处理分类的系统。在本文中,我们使用AlexNet,VGG19,GoogLeNet和Resnet50预训练模型,提供了基于深度学习并使用卷积神经网络进行特征提取的有效的卫星图像分类方法。 Resnet50模型在三个不同的数据集SAT4,SAT6和UC Merced Land上取得了比其他模型更好的结果。该模型对UC Merced Land数据集的分类准确率为98%,对于SAT4为95.8%,对于SAT6为94.1%。

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