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Computer Vision, Machine Learning, and the Promise of Phenomics in Ecology and Evolutionary Biology

Lürig, Moritz D. LU ; Donoughe, Seth ; Svensson, Erik I. LU orcid ; Porto, Arthur and Tsuboi, Masahito LU (2021) In Frontiers in Ecology and Evolution 9.
Abstract

For centuries, ecologists and evolutionary biologists have used images such as drawings, paintings and photographs to record and quantify the shapes and patterns of life. With the advent of digital imaging, biologists continue to collect image data at an ever-increasing rate. This immense body of data provides insight into a wide range of biological phenomena, including phenotypic diversity, population dynamics, mechanisms of divergence and adaptation, and evolutionary change. However, the rate of image acquisition frequently outpaces our capacity to manually extract meaningful information from images. Moreover, manual image analysis is low-throughput, difficult to reproduce, and typically measures only a few traits at a time. This has... (More)

For centuries, ecologists and evolutionary biologists have used images such as drawings, paintings and photographs to record and quantify the shapes and patterns of life. With the advent of digital imaging, biologists continue to collect image data at an ever-increasing rate. This immense body of data provides insight into a wide range of biological phenomena, including phenotypic diversity, population dynamics, mechanisms of divergence and adaptation, and evolutionary change. However, the rate of image acquisition frequently outpaces our capacity to manually extract meaningful information from images. Moreover, manual image analysis is low-throughput, difficult to reproduce, and typically measures only a few traits at a time. This has proven to be an impediment to the growing field of phenomics – the study of many phenotypic dimensions together. Computer vision (CV), the automated extraction and processing of information from digital images, provides the opportunity to alleviate this longstanding analytical bottleneck. In this review, we illustrate the capabilities of CV as an efficient and comprehensive method to collect phenomic data in ecological and evolutionary research. First, we briefly review phenomics, arguing that ecologists and evolutionary biologists can effectively capture phenomic-level data by taking pictures and analyzing them using CV. Next we describe the primary types of image-based data, review CV approaches for extracting them (including techniques that entail machine learning and others that do not), and identify the most common hurdles and pitfalls. Finally, we highlight recent successful implementations and promising future applications of CV in the study of phenotypes. In anticipation that CV will become a basic component of the biologist’s toolkit, our review is intended as an entry point for ecologists and evolutionary biologists that are interested in extracting phenotypic information from digital images.

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author
; ; ; and
organization
publishing date
type
Contribution to journal
publication status
published
subject
keywords
computer vision, high-dimensional data, high-throughput phenotyping, image analysis, image segmentation, machine learning, measurement theory, phenomics
in
Frontiers in Ecology and Evolution
volume
9
article number
642774
pages
19 pages
publisher
Frontiers Media S. A.
external identifiers
  • scopus:85105396016
ISSN
2296-701X
DOI
10.3389/fevo.2021.642774
language
English
LU publication?
yes
additional info
Funding Information: Funding. The publication of this study was funded through the Swedish Research Council International Postdoc Grant (2016-06635) to MT. ML was supported by a Swiss National Science Foundation Early Postdoc. Mobility grant (SNSF: P2EZP3_191804). ES was funded by a grant from the Swedish Research Council (VR: Grant No. 2016-03356). SD was supported by the Jane Coffin Childs Memorial Fund. Funding Information: The publication of this study was funded through the Swedish Research Council International Postdoc Grant (2016-06635) to MT. ML was supported by a Swiss Publisher Copyright: © Copyright © 2021 Lürig, Donoughe, Svensson, Porto and Tsuboi.
id
a2f9ff93-153b-440b-889a-7c34b93202e3
date added to LUP
2021-11-23 12:30:43
date last changed
2023-04-02 19:30:45
@article{a2f9ff93-153b-440b-889a-7c34b93202e3,
  abstract     = {{<p>For centuries, ecologists and evolutionary biologists have used images such as drawings, paintings and photographs to record and quantify the shapes and patterns of life. With the advent of digital imaging, biologists continue to collect image data at an ever-increasing rate. This immense body of data provides insight into a wide range of biological phenomena, including phenotypic diversity, population dynamics, mechanisms of divergence and adaptation, and evolutionary change. However, the rate of image acquisition frequently outpaces our capacity to manually extract meaningful information from images. Moreover, manual image analysis is low-throughput, difficult to reproduce, and typically measures only a few traits at a time. This has proven to be an impediment to the growing field of phenomics – the study of many phenotypic dimensions together. Computer vision (CV), the automated extraction and processing of information from digital images, provides the opportunity to alleviate this longstanding analytical bottleneck. In this review, we illustrate the capabilities of CV as an efficient and comprehensive method to collect phenomic data in ecological and evolutionary research. First, we briefly review phenomics, arguing that ecologists and evolutionary biologists can effectively capture phenomic-level data by taking pictures and analyzing them using CV. Next we describe the primary types of image-based data, review CV approaches for extracting them (including techniques that entail machine learning and others that do not), and identify the most common hurdles and pitfalls. Finally, we highlight recent successful implementations and promising future applications of CV in the study of phenotypes. In anticipation that CV will become a basic component of the biologist’s toolkit, our review is intended as an entry point for ecologists and evolutionary biologists that are interested in extracting phenotypic information from digital images.</p>}},
  author       = {{Lürig, Moritz D. and Donoughe, Seth and Svensson, Erik I. and Porto, Arthur and Tsuboi, Masahito}},
  issn         = {{2296-701X}},
  keywords     = {{computer vision; high-dimensional data; high-throughput phenotyping; image analysis; image segmentation; machine learning; measurement theory; phenomics}},
  language     = {{eng}},
  month        = {{04}},
  publisher    = {{Frontiers Media S. A.}},
  series       = {{Frontiers in Ecology and Evolution}},
  title        = {{Computer Vision, Machine Learning, and the Promise of Phenomics in Ecology and Evolutionary Biology}},
  url          = {{http://dx.doi.org/10.3389/fevo.2021.642774}},
  doi          = {{10.3389/fevo.2021.642774}},
  volume       = {{9}},
  year         = {{2021}},
}