Tree species classification from complex laser scanning data in Mediterranean forests using deep learning


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Abstract

jats:titleAbstract</jats:title>jats:p jats:list

jats:list-itemjats:pRecent advances in terrestrial laser scanning (TLS) technology have enabled the automatic capture of three‐dimensional vegetation structure at high resolution, but the scalability of using these data for large‐scale forest monitoring is limited by reliance on intensive manual data processing, including the use of stem maps generated in the field to determine tree species. New methods from data science have the capacity to automate this identification process, reducing the hurdles towards automated inventories with TLS. In particular, contemporary developments in point cloud processing methods, alongside large increases in the computing power of consumer‐level graphics processing units, provide new opportunities.</jats:p></jats:list-item>

jats:list-itemjats:pHere, we apply a deep learning‐based approach, based on joint classification from multiple viewpoints for each stem, to automatically classify tree species directly from laser scanning data obtained in structurally complex Mediterranean forests. We also explore the use of data augmentation techniques to maximise performance for a fixed number of manually labelled stems. Our method does not require expensive pre‐processing such as leaf‐wood separation or quantitative reconstructions.</jats:p></jats:list-item>

jats:list-itemjats:pUsing modern network architectures and data augmentation techniques, and without extensive pre‐processing, we are able to achieve high overall and per‐species accuracy that is comparable or higher than in existing work while using data from a water‐limited ecosystem complicated by structural convergence and multi‐stem trees.</jats:p></jats:list-item>

jats:list-itemjats:pOur findings demonstrate the power of deep learning to remove a major TLS data processing obstacle—individual species identification—and to minimise the bottleneck created by manual data labelling requirements in the use of TLS for standard forest monitoring.</jats:p></jats:list-item> </jats:list> </jats:p>

Description
Keywords
Biodiversity ecology, Ecosystem ecology, RESEARCH ARTICLE, RESEARCH ARTICLES, convolutional neural networks, data augmentation, deep learning, forest monitoring, machine learning, terrestrial laser scanning, tree species classification, water‐limited ecosystems
Journal Title
Methods in Ecology and Evolution
Conference Name
Journal ISSN
2041-210X
2041-210X
Volume Title
Publisher
Wiley
Sponsorship
UK Research and Innovation (EP/S022961/1, MR/T019832/1)