基于深度学习的高分三号海冰检测

Q2 Social Sciences
Jinxin Li, Chao Wang, Shigang Wang, Hong Zhang, Qiaoyan Fu, Yuanyuan Wang
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引用次数: 16

摘要

海冰探测是合成孔径雷达(SAR)图像处理中最重要的应用之一,一直为船舶导航和气候变化研究服务。由于SAR图像的噪声、低分辨率和多特征,以及传统SAR图像分类方法的局限性,传统海冰SAR图像的检测精度不高,不能满足实际应用的高精度要求。深度学习是目前最流行的机器学习方法之一,已被一些研究者研究并应用于SAR图像分类中。但是,到目前为止,很少有研究人员将深度学习方法应用到海冰SAR图像检测中。本文利用卷积神经网络(CNN)将中国高分三号两场景海冰SAR数据应用于海冰探测研究。首先,在高分三号海冰SAR图像上,对不同类别的SAR图像进行拼接,获得列车数据;然后,使用不同类别的训练数据对CNN进行训练,得到训练好的CNN模型;训练完成后,利用训练好的CNN模型对高分三号海冰SAR图像进行海冰和非海冰的分类,采用基于patch的窗口遍历整个SAR图像。为了说明深度学习的海冰检测结果,对几种传统的SAR图像检测方法进行了实验对比。实验结果表明,深度学习方法适用于海冰SAR图像的检测,并且比其他传统方法具有更高的检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gaofen-3 sea ice detection based on deep learning
Sea ice detection is one of the most important applications in synthetic aperture radar (SAR) image processing and it always be served for ship navigation and climate change studies. Due to the noise, low resolution and multiple characteristics of SAR images, and limitations of traditional SAR image classification methods, the detection accuracy of traditional sea ice SAR images is not high and can't meet the high precision requirements of application in practice. Deep learning, one of the most popular machine learning methods, have been researched and applied in SAR image classification by some researchers. But, so far, very few researchers have applied deep learning methods to sea ice SAR image detection. In this paper, two scenes of Chinese Gaofen-3 SAR data of sea ice were applied to sea ice detection research using convolutional neural network (CNN). First, the train data is obtained from Gaofen-3 sea ice SAR Image by chipping different classes of SAR images into patches; Then, the different classes train data is used to train the CNN and get the trained CNN model; After the training, the trained CNN model was used to classify the Gaofen-3 sea ice SAR image with sea ice and non-sea ice by a patch-based window traversing the entire SAR image. In order to illustrate the sea ice detection result of deep learning, several traditional SAR image detection methods are experimented for contrast. Experimental results demonstrate that deep learning method is suitable for sea ice SAR image detection and achieves high detection accuracy than others traditional methods.
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来源期刊
Advances in Engineering Education
Advances in Engineering Education Social Sciences-Education
CiteScore
2.90
自引率
0.00%
发文量
8
期刊介绍: The journal publishes articles on a wide variety of topics related to documented advances in engineering education practice. Topics may include but are not limited to innovations in course and curriculum design, teaching, and assessment both within and outside of the classroom that have led to improved student learning.
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