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将机载遥感数据转化为生态信息的数据科学挑战。

A data science challenge for converting airborne remote sensing data into ecological information.

作者信息

Marconi Sergio, Graves Sarah J, Gong Dihong, Nia Morteza Shahriari, Le Bras Marion, Dorr Bonnie J, Fontana Peter, Gearhart Justin, Greenberg Craig, Harris Dave J, Kumar Sugumar Arvind, Nishant Agarwal, Prarabdh Joshi, Rege Sundeep U, Bohlman Stephanie Ann, White Ethan P, Wang Daisy Zhe

机构信息

School of Natural Resources and Environment, University of Florida, Gainesville, FL, USA.

School of Forest Resources and Conservation, University of Florida, Gainesville, FL, USA.

出版信息

PeerJ. 2019 Feb 28;6:e5843. doi: 10.7717/peerj.5843. eCollection 2019.

Abstract

Ecology has reached the point where data science competitions, in which multiple groups solve the same problem using the same data by different methods, will be productive for advancing quantitative methods for tasks such as species identification from remote sensing images. We ran a competition to help improve three tasks that are central to converting images into information on individual trees: (1) crown segmentation, for identifying the location and size of individual trees; (2) alignment, to match ground truthed trees with remote sensing; and (3) species classification of individual trees. Six teams (composed of 16 individual participants) submitted predictions for one or more tasks. The crown segmentation task proved to be the most challenging, with the highest-performing algorithm yielding only 34% overlap between remotely sensed crowns and the ground truthed trees. However, most algorithms performed better on large trees. For the alignment task, an algorithm based on minimizing the difference, in terms of both position and tree size, between ground truthed and remotely sensed crowns yielded a perfect alignment. In hindsight, this task was over simplified by only including targeted trees instead of all possible remotely sensed crowns. Several algorithms performed well for species classification, with the highest-performing algorithm correctly classifying 92% of individuals and performing well on both common and rare species. Comparisons of results across algorithms provided a number of insights for improving the overall accuracy in extracting ecological information from remote sensing. Our experience suggests that this kind of competition can benefit methods development in ecology and biology more broadly.

摘要

生态学已经发展到这样一个阶段

数据科学竞赛,即多个团队使用相同的数据通过不同的方法解决相同的问题,对于推进诸如从遥感图像中识别物种等任务的定量方法将是富有成效的。我们举办了一场竞赛,以帮助改进将图像转换为单株树木信息的三个核心任务:(1)树冠分割,用于识别单株树木的位置和大小;(2)对齐,将实地测量的树木与遥感数据进行匹配;(3)单株树木的物种分类。六个团队(由16名个人参与者组成)提交了一个或多个任务的预测结果。事实证明,树冠分割任务最具挑战性,性能最佳的算法在遥感树冠与实地测量树木之间的重叠率仅为34%。然而,大多数算法在大树上的表现更好。对于对齐任务,一种基于最小化实地测量树冠与遥感树冠在位置和树木大小方面差异的算法实现了完美对齐。事后看来,这项任务由于只包括目标树木而不是所有可能的遥感树冠而被过度简化了。有几种算法在物种分类方面表现良好,性能最佳的算法正确分类了92%的个体,并且在常见物种和稀有物种上都表现出色。对不同算法结果的比较为提高从遥感中提取生态信息的整体准确性提供了许多见解。我们的经验表明,这种竞赛可以更广泛地有益于生态学和生物学中的方法开发。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e639/6397763/ba26b2994bf1/peerj-07-5843-g001.jpg

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