从公民科学数据估计陨石坑注释中的假阳性污染。

IF 0.7 4区 物理与天体物理 Q4 ASTRONOMY & ASTROPHYSICS Earth Moon and Planets Pub Date : 2017-01-01 Epub Date: 2016-11-19 DOI:10.1007/s11038-016-9499-9
P D Tar, R Bugiolacchi, N A Thacker, J D Gilmour
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引用次数: 9

摘要

基于网络的公民科学通常涉及由大量受过最低限度训练的志愿者对图像特征进行分类,例如在月球动物园项目下识别月球撞击坑。虽然这些方法有助于分析大型图像数据集,但用户的经验不足和图像内容的模糊性可能导致误报识别的污染。我们给出了一种方法,使用线性泊松模型和图像模板匹配,可以量化公民科学月球动物园陨石坑注释中的假阳性污染水平。线性泊松模型是机器学习的一种形式,与大多数替代机器学习方法不同,它支持预测误差建模和拟合优度。所提出的监督学习系统可以减少陨石坑数量的可变性,同时提供对剩余真注释和假注释估计数量的预测误差评估。在受人类主观性影响的研究领域,拟议的方法通过利用图像证据,在候选陨石坑识别的指导下,提供了一定程度的客观性。
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Estimating False Positive Contamination in Crater Annotations from Citizen Science Data.

Web-based citizen science often involves the classification of image features by large numbers of minimally trained volunteers, such as the identification of lunar impact craters under the Moon Zoo project. Whilst such approaches facilitate the analysis of large image data sets, the inexperience of users and ambiguity in image content can lead to contamination from false positive identifications. We give an approach, using Linear Poisson Models and image template matching, that can quantify levels of false positive contamination in citizen science Moon Zoo crater annotations. Linear Poisson Models are a form of machine learning which supports predictive error modelling and goodness-of-fits, unlike most alternative machine learning methods. The proposed supervised learning system can reduce the variability in crater counts whilst providing predictive error assessments of estimated quantities of remaining true verses false annotations. In an area of research influenced by human subjectivity, the proposed method provides a level of objectivity through the utilisation of image evidence, guided by candidate crater identifications.

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来源期刊
Earth Moon and Planets
Earth Moon and Planets 地学天文-地球科学综合
CiteScore
1.60
自引率
22.20%
发文量
4
审稿时长
>12 weeks
期刊介绍: Earth, Moon, and Planets, An International Journal of Solar System Science, publishes original contributions on subjects ranging from star and planet formation and the origin and evolution of the solar and extra-solar planetary systems, to asteroids, comets, meteoroids and near-Earth objects, including the terrestrial impact hazard and solar system - terrestrial relationships, and related topics concerning the physical and chemical properties of the material constitution of these bodies, including chaotic behavior. The journal also publishes relevant special issues and topical conference proceedings, review articles on problems of current interest, and book reviews. The Editor welcomes proposals from guest editors for special thematic issues.
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