基于ConvNet-2的SAR图像在冰山分类中的应用

Valaparla Rohini, Pamidi Rama Tejaswini, Sappa Visweswara Rao, Shaik Aseef, Vallabhu Kathyayani Karishma
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引用次数: 1

摘要

由于气候变化,冰山正在融化,在海洋地区没有显示出危险的道路,因此冰山地区不适合运输。根据这幅图,我们无法识别出海洋区域的所有冰山。因此,通过使用深度学习算法,我们可以通过卫星图像对冰山进行分类。在过去的几十年里,有几种机器学习算法被用于图像分类。但我们的目标是实现一个应用程序,通过使用合成孔径雷达(SAR)图像对冰山进行分类,这些图像可以在Kaggle存储库中获得。数据集来自挪威国家石油公司的C-CORE加拿大东海岸。在这里,我们利用遥感数据对冰山进行分类。针对该数据,利用卷积神经网络对图像进行分类,并对图像特征进行深度提取。CNN算法在SAR图像上实现,在训练数据集时,训练准确率达到99.8%,验证准确率达到89.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of SAR images in Iceberg Classification by using ConvNet-2
Iceberg areas are not safe for transportation because based on climate changes icebergs are melting and not showing a dangerous way in sea areas. Based on the vision we can’t identify all the icebergs in the ocean area. So, by using a Deep learning algorithm we can classify icebergs through satellite images. In the past decades, several machine learning algorithms are implemented for classification of the images. But our aim is to implement an application to classify the iceberg by using synthetic-aperture radar (SAR) images which are available at the Kaggle repository. The Data set was from the Statoil C-CORE East Coast of Canada. Here we classify the icebergs by using remotely sensed data. For this data, the Convolutional Neural Network is used for image classification and extraction of the features of images deeply. The CNN algorithm was implemented on the SAR images and achieved 99.8% training and 89.5% of validation accuracy with high time consumption when training the dataset.
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