国家生态观测站网络的树冠树种图。

IF 9.8 1区 生物学 Q1 Agricultural and Biological Sciences PLoS Biology Pub Date : 2024-07-16 eCollection Date: 2024-07-01 DOI:10.1371/journal.pbio.3002700
Ben G Weinstein, Sergio Marconi, Alina Zare, Stephanie A Bohlman, Aditya Singh, Sarah J Graves, Lukas Magee, Daniel J Johnson, Sydne Record, Vanessa E Rubio, Nathan G Swenson, Philip Townsend, Thomas T Veblen, Robert A Andrus, Ethan P White
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引用次数: 0

摘要

森林生态系统的生态取决于树木的组成。在大尺度上捕捉单棵树木的细粒度信息为森林生态系统、森林恢复和对干扰的反应提供了独特的视角。大范围的树木个体数据有望扩大森林分析、生物地理研究和生态系统监测的规模,同时又不会丢失个体物种组成和丰度的细节。利用深度神经网络的计算机视觉技术,可以通过实地研究人员收集的标注数据,将原始传感器数据转换为树冠单个树种的预测数据。我们使用 40,000 多棵单棵树木的茎干作为训练数据,为国家生态观测网络(NEON)中 24 个站点的 1 亿多棵单棵树木创建了景观级别的物种预测。利用针对每个地理区域进行微调的分层多时空模型,我们生成了可作为 1 平方公里形状文件使用的开源数据,其中包含单个树种预测以及 81 种冠层树种的树冠位置、树冠面积和高度。特定地点模型的平均准确率为 79%,每个地点平均覆盖 6 个树种,每个地点覆盖 3 到 15 个树种不等。所有预测结果均公开存档,并已上传到谷歌地球引擎,以造福生态学界,并与其他遥感资产进行叠加。我们概述了这些数据在生态学和计算机视觉研究中的潜在用途和局限性,以及利用有针对性的数据采样改进预测的策略。
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Individual canopy tree species maps for the National Ecological Observatory Network.

The ecology of forest ecosystems depends on the composition of trees. Capturing fine-grained information on individual trees at broad scales provides a unique perspective on forest ecosystems, forest restoration, and responses to disturbance. Individual tree data at wide extents promises to increase the scale of forest analysis, biogeographic research, and ecosystem monitoring without losing details on individual species composition and abundance. Computer vision using deep neural networks can convert raw sensor data into predictions of individual canopy tree species through labeled data collected by field researchers. Using over 40,000 individual tree stems as training data, we create landscape-level species predictions for over 100 million individual trees across 24 sites in the National Ecological Observatory Network (NEON). Using hierarchical multi-temporal models fine-tuned for each geographic area, we produce open-source data available as 1 km2 shapefiles with individual tree species prediction, as well as crown location, crown area, and height of 81 canopy tree species. Site-specific models had an average performance of 79% accuracy covering an average of 6 species per site, ranging from 3 to 15 species per site. All predictions are openly archived and have been uploaded to Google Earth Engine to benefit the ecology community and overlay with other remote sensing assets. We outline the potential utility and limitations of these data in ecology and computer vision research, as well as strategies for improving predictions using targeted data sampling.

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来源期刊
PLoS Biology
PLoS Biology BIOCHEMISTRY & MOLECULAR BIOLOGY-BIOLOGY
CiteScore
15.40
自引率
2.00%
发文量
359
审稿时长
3-8 weeks
期刊介绍: PLOS Biology is the flagship journal of the Public Library of Science (PLOS) and focuses on publishing groundbreaking and relevant research in all areas of biological science. The journal features works at various scales, ranging from molecules to ecosystems, and also encourages interdisciplinary studies. PLOS Biology publishes articles that demonstrate exceptional significance, originality, and relevance, with a high standard of scientific rigor in methodology, reporting, and conclusions. The journal aims to advance science and serve the research community by transforming research communication to align with the research process. It offers evolving article types and policies that empower authors to share the complete story behind their scientific findings with a diverse global audience of researchers, educators, policymakers, patient advocacy groups, and the general public. PLOS Biology, along with other PLOS journals, is widely indexed by major services such as Crossref, Dimensions, DOAJ, Google Scholar, PubMed, PubMed Central, Scopus, and Web of Science. Additionally, PLOS Biology is indexed by various other services including AGRICOLA, Biological Abstracts, BIOSYS Previews, CABI CAB Abstracts, CABI Global Health, CAPES, CAS, CNKI, Embase, Journal Guide, MEDLINE, and Zoological Record, ensuring that the research content is easily accessible and discoverable by a wide range of audiences.
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