基于深度学习的红外遥感信息自动提取 |
投稿时间:2017-04-01 修订日期:2017-04-10 点此下载全文 |
引用本文:陈睿敏,孙胜利.基于深度学习的红外遥感信息自动提取[J].红外,2017,38(8):37~43 |
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基金项目:中国科学院上海技术物理研究所2015年创新专项(CX-63) |
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中文摘要:为了提高红外遥感图像地物
信息自动提取的精确性,同时避免人工提取遥感
信息的低效性,提出了一种基于UNet深度学习模型
的遥感信息提取算法。该算法用于从红外遥感图像中分割
出5类地物信息(包括道路、建筑、树木、农田和水
体)。首先,对分辨率高但数量较少的训练数
据进行小像幅的随机裁剪,并对其进行相应的数据增
强处理。然后搭建UNet深度学习模型,并用它
自动提取遥感图像的特征信息。采用交叉熵损失函数
以及Adam反向传播优化算法对该模型进行训练,并对测
试样本中的5幅遥感图像进行精确的地物信息提取。最后,运
用Jaccard指数对测试结果进行精度评定。实验结果表明,该
方法对高分辨率红外遥感图像信息和可见光
遥感图像信息进行了充分融合,对于不同种类地物
的定位和分类都取得了较高精度。 |
中文关键词:深度学习 UNet 语义分割 多光谱遥感 |
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Automatic Extraction of Infrared Remote Sensing Information Based on Deep Learning |
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Abstract:To improve the accuracy of automatic
extraction of object information in infrared remote sensing
images while avoiding the inefficiency of manual extraction
of remote sensing information, a remote sensing information
extraction algorithm based on the UNet deep learning model is
proposed. The algorithm is used to segment five kinds of object
feature information including road, building, tree, farmland
and water in infrared remote sensing images. Firstly, a small
number of high resolution training data are cropped randomly
and corresponding data enhancement processing is implemented on
them. Then, a UNet deep learning model is established and is used
to extract the feature information in remote sensing images
automatically. The model is trained by using the cross-entropy
loss function and Adam optimization algorithm and is used to extract
the object information in five remote sensing images accurately.
Finally, the classification result is evaluated by using the
Jaccard index. The experimental results show that this method
can fully fuse the high resolution infrared remote sensing
image information with the visible remote sensing image information.
It has higher accuracy in positioning and classification for
various objects. |
keywords:deep learning UNet semantic segmentation multispectral remote sensing |
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