Evaluation of Oversampling Strategies in Machine Learning for Space Debris Detection

M. Khalil, E. Fantino, P. Liatsis
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引用次数: 3

Abstract

In recent years, the number of resident space objects has increased dramatically. The chances of space objects colliding with each other are increasing, thus posing a threat to active satellites and future space missions. Identifying and detecting space debris is essential in ensuring the security of space assets. In this contribution, we investigate the effectiveness of several feature extraction and oversampling techniques by attempting classification of real-world light curves of space objects using eight machine learning methods. Three feature extraction tools are utilized to represent the light curves as sets of features, i.e., FATS (Feature Analysis for Time Series), feets (feATURE eXTRACTOR FOR tIME sERIES) and UPSILoN (AUtomated Classification for Periodic Variable Stars using MachIne LearNing) public tools. To address the problem of class imbalance, four oversampling techniques are applied, i.e., ADaptive SYNthetic Sampling Approach (ADASYN), Synthetic Minority Oversampling TEchnique (SMOTE), and two modifications of SMOTE, specifically, Borderline-SMOTE and Support Vector Machine (SVM)-SMOTE. Results show that the features extracted using the FATS tool lead to a better performance, and therefore, they appear to represent light curves in a more informative manner, compared to feets and UPSILoN. Moreover, the use of SVM-SMOTE technique improves the performance of the utilized classifiers more than other oversampling techniques.
空间碎片检测机器学习中过采样策略的评价
近年来,驻留空间物体的数量急剧增加。空间物体相互碰撞的可能性正在增加,从而对现役卫星和未来的空间任务构成威胁。识别和探测空间碎片对于确保空间资产的安全至关重要。在这篇文章中,我们通过尝试使用八种机器学习方法对空间物体的真实光线曲线进行分类,研究了几种特征提取和过采样技术的有效性。使用三种特征提取工具将光曲线表示为特征集,即fat(时间序列特征分析),feet(时间序列特征提取器)和UPSILoN(使用机器学习的周期变星自动分类)公共工具。为了解决类不平衡问题,采用了四种过采样技术,即自适应合成采样方法(ADASYN)、合成少数过采样技术(SMOTE)以及对SMOTE的两种改进,即Borderline-SMOTE和支持向量机(SVM)-SMOTE。结果表明,使用fat工具提取的特征具有更好的性能,因此,与feet和UPSILoN相比,它们似乎以更丰富的方式表示光曲线。此外,使用SVM-SMOTE技术比其他过采样技术更能提高所使用分类器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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