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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Active Machine Learning Approach for Crater Detection From Planetary Imagery and Digital Elevation Models
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Active Machine Learning Approach for Crater Detection From Planetary Imagery and Digital Elevation Models

机译:主动机器学习方法从行星影像和数字高程模型进行火山口检测

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摘要

Craters are dominant geomorphological features on the surfaces of the moon, Mars, and other planets. The distribution of craters provides valuable information on the planetary surface geology. Machine learning is a widely used approach to detect craters on planetary surface data. A critical step in machine learning is the determination of training samples. In previous studies, the training samples were mainly selected manually, which usually leads to insufficient numbers due to the high cost and unfavorable quality. Surface imagery and digital elevation models (DEMs) are now commonly available for planetary surfaces; this offers new opportunities for crater detection with better performance. This paper presents a novel active machine learning approach, in which the imagery and DEMs covering the same region are used for collecting training samples with more automation and better performance. In the training process, the approach actively asks for annotations for the 2-D features derived from imagery with inputs from 3-D features derived from the DEMs. Thus, the training pool can be updated accordingly, and the model can be retrained. This process can be conducted several times to obtain training samples in sufficient number and of favorable quality, from which a classifier with better performance can be generated, and it can then be used for automatic crater detection in other regions. The proposed approach highlights two advantages: 1) automatic generation of a large number of high-quality training samples and 2) prioritization of training samples near the classification boundary so as to learn more quickly. Two sets of test data on the moon and Mars were used for the experimental validation. The performance of the proposed approach was superior to that of a regular machine learning method.
机译:陨石坑是月球,火星和其他行星表面的主要地貌特征。陨石坑的分布为行星表面地质学提供了有价值的信息。机器学习是一种广泛使用的方法,用于检测行星表面数据上的坑。机器学习中的关键步骤是确定训练样本。在以前的研究中,训练样本主要是人工选择的,由于成本高和质量差,通常会导致数量不足。如今,行星表面普遍使用了表面图像和数字高程模型(DEM)。这为性能更好的陨石坑检测提供了新的机会。本文提出了一种新颖的主动机器学习方法,其中覆盖同一区域的图像和DEM用于收集训练样本,具有更高的自动化程度和更好的性能。在训练过程中,该方法会主动要求对来自图像的2-D特征进行注释,并使用来自DEM的3-D特征进行输入。因此,可以相应地更新训练池,并且可以重新训练模型。可以多次执行此过程,以获得数量充足且质量优良的训练样本,从中可以生成性能更好的分类器,然后将其用于其他区域的自动坑坑检测。所提出的方法突出了两个优点:1)自动生成大量高质量的训练样本; 2)在分类边界附近对训练样本进行优先排序,以便更快地学习。实验使用了两组在月球和火星上的测试数据。所提出的方法的性能优于常规的机器学习方法。

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