利用深度学习模型识别地表地形特征:以陨石坑探测为例

Wenwen Li, Bin Zhou, Chia-Yu Hsu, Yixing Li, Fengbo Ren
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引用次数: 36

摘要

本文利用流行的深度学习模型- faster-RCNN -使用一组最佳遥感和自然图像的混合集来支持自动地形特征检测和分类。由于陨石坑的地貌特征提供了地表老化的重要信息,因此本研究以陨石坑探测为例进行了研究。陨石坑,如撞击坑,也在许多方面影响着全球的变化,如地理、地形、矿物和碳氢化合物的生产等。对收集到的数据进行标记,并通过GPU服务器对网络进行训练。实验结果表明,更快的rcnn模型与广泛使用的卷积网络ZF-net相结合,可以很好地检测地表陨石坑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognizing terrain features on terrestrial surface using a deep learning model: an example with crater detection
This paper exploits the use of a popular deep learning model - the faster-RCNN - to support automatic terrain feature detection and classification using a mixed set of optimal remote sensing and natural images. Crater detection is used as the case study in this research since this geomorphological feature provides important information about surface aging. Craters, such as impact craters, also effect global changes in many aspects, such as geography, topography, mineral and hydrocarbon production, etc. The collected data were labeled and the network was trained through a GPU server. Experimental results show that the faster-RCNN model coupled with a widely used convolutional network ZF-net performs well in detecting craters on the terrestrial surface.
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