Lewis Lovell, Isabella C. Adriani, G. Nodjoumi, J. E. Suárez-Valencia, Daniel Le Corre, Anita Heward, Angelo Pio Rossi, Nick Cox
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We provided training datasets of craters and boulders to the participants, who used them to complete the three steps of the challenge: creating a model that detects these landforms, applying these models to the Archytas Dome region, and computing a traverse for optimal exploration of the zone. In this paper, we showcase the results and considerations of the team that won the challenge. The first step was to enhance the training data by generating new labels and resizing the existing ones. The original and the improved dataset were then used to train four iterations of a neural network model. Results The model with the enhanced dataset yielded the best scores when applied to the Archytas Domes zone (75.46\\%). Finally, the traverse was calculated using proximity analysis while avoiding steep slopes and dangerous landforms. Conclusions We found that the variations between tasks and the different approaches necessary to solve them turned out to be the major difficulty of the challenge, as it required backgrounds in both remote sensing and computer sciences. This was reflected in the low participation and the multidisciplinary of the members of the winning team.","PeriodicalId":74359,"journal":{"name":"Open research Europe","volume":"75 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-06-13","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Design of robotic traverses on the Archytas Dome on the Moon\",\"authors\":\"Lewis Lovell, Isabella C. Adriani, G. Nodjoumi, J. E. 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引用次数: 0
摘要
背景 近年来,我们看到了研究和探索月球的新努力;在这方面,机器学习等现代技术非常重要,尤其是在识别和分类月球表面方面。探索机器学习月球数据挑战赛(EXPLORE Machine Learning Lunar Data Challenge)是 2022 年最后一个季度的一项公共活动。其目的是鼓励参赛者应用机器学习技术识别行星任务的潜在危险,并设计探索月球表面的机器人穿越系统。方法 挑战赛的目标月球区域是弗里戈里斯海的阿基塔斯穹顶,该区域地质多样,是未来探索的潜在区域。我们向参赛者提供了陨石坑和巨石的训练数据集,参赛者利用这些数据集完成了挑战赛的三个步骤:创建一个能检测这些地貌的模型,将这些模型应用到 Archytas Dome 区域,并计算出该区域的最佳探索路线。在本文中,我们将展示赢得挑战的团队的成果和考虑因素。第一步是通过生成新标签和调整现有标签的大小来增强训练数据。然后使用原始数据集和改进后的数据集对神经网络模型进行四次迭代训练。结果 在应用于 Archytas Domes 区域时,使用增强数据集的模型得分最高(75.46%)。最后,在避开陡坡和危险地貌的同时,利用邻近性分析计算出了穿越路线。结论 我们发现,不同任务之间的差异以及解决这些任务所需的不同方法是这项挑战的主要难点,因为它需要遥感和计算机科学两方面的背景。这一点从获胜团队的低参与度和成员的多学科背景中可见一斑。
Design of robotic traverses on the Archytas Dome on the Moon
Background In recent years, we have seen renewed efforts to study and explore the Moon; modern techniques like machine learning can be important in this context, especially in recognising and classifying the lunar surface. The EXPLORE Machine Learning Lunar Data Challenge was a public initiative during the last quarter of 2022. Its objective was to encourage participants to apply machine learning techniques to identify potential hazards for a planetary mission and to design a robotic traverse for exploring the lunar surface. Methods The lunar region targeted by the challenge was the Archytas Dome in Mare Frigoris, a location with a varied geology and a potential zone for future exploration. We provided training datasets of craters and boulders to the participants, who used them to complete the three steps of the challenge: creating a model that detects these landforms, applying these models to the Archytas Dome region, and computing a traverse for optimal exploration of the zone. In this paper, we showcase the results and considerations of the team that won the challenge. The first step was to enhance the training data by generating new labels and resizing the existing ones. The original and the improved dataset were then used to train four iterations of a neural network model. Results The model with the enhanced dataset yielded the best scores when applied to the Archytas Domes zone (75.46\%). Finally, the traverse was calculated using proximity analysis while avoiding steep slopes and dangerous landforms. Conclusions We found that the variations between tasks and the different approaches necessary to solve them turned out to be the major difficulty of the challenge, as it required backgrounds in both remote sensing and computer sciences. This was reflected in the low participation and the multidisciplinary of the members of the winning team.