Convening Expert Taxonomists to Build Image Libraries for Training Automated Classifiers

Author:

Kenitz Kasia M.1ORCID,Orenstein Eric C.1ORCID,Anderson Clarissa R.1,Barth Alexander J.23ORCID,Briseño‐Avena Christian4,Caron David A.5,Carter Melissa L.1,Eggleston Emily5,Franks Peter J. S.1ORCID,Fumo James T.16,Jaffe Jules S.1,McBeain Kelsey A.6,Odell Anthony7,Seech Kristi1,Shipe Rebecca8,Smith Jayme9,Taniguchi Darcy A. A.10ORCID,Venrick Elizabeth L.1,Barton Andrew D.111

Affiliation:

1. Scripps Institution of Oceanography, University of California San Diego La Jolla CA

2. Department of Biological Sciences California Polytechnic State University San Luis Obispo CA

3. Biological Sciences University of South Carolina Columbia SC

4. Department of Environmental and Ocean Sciences University of San Diego San Diego CA

5. Department of Biological Sciences University of Southern California Los Angeles CA

6. University of Hawai'i at Manoa Honolulu HI

7. University of Washington's Olympic Natural Resources Center Forks WA

8. Institute of the Environment and Sustainability, University of California Los Angeles Los Angeles CA

9. Southern California Coastal Water Research Project Authority Costa Mesa CA

10. Biology Department California State University San Marcos San Marcos CA

11. Department of Ecology, Behavior and Evolution University of California San Diego La Jolla CA

Abstract

AbstractDigital imaging technologies are increasingly used to study life in the ocean. To deal with the large volume of image data collected over space and time, scientists employ various machine learning and deep learning algorithms to perform automated image classification. Training of classifiers requires a large number of expertly curated sets of images, a time‐consuming process that requires taxonomic knowledge and understanding of the local ecosystem. The creation of these labeled training sets is the critical bottleneck for building skillful automated classifiers. Here, we discuss how we overcame this barrier by leveraging taxonomic knowledge from a group of specialists in a workshop setting and suggest best practices for effectively organizing image annotation efforts. In our experience, this 2 day workshop proved very insightful and facilitated classification of over 4 years of plankton images obtained at Scripps Pier (La Jolla, CA), focusing on diatoms and dinoflagellates. We highlight the importance of facilitating a dialog between taxonomists and engineers to better integrate ecological goals with computational constraints, and encourage continuous involvement of taxonomic experts for successful implementation of automated classifiers.

Publisher

Wiley

Subject

Water Science and Technology,Aquatic Science,Oceanography

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