Skip to main content
Journal cover image

Automated, high-throughput image calibration for parallel-laser photogrammetry

Publication ,  Journal Article
Richardson, JL; Levy, EJ; Ranjithkumar, R; Yang, H; Monson, E; Cronin, A; Galbany, J; Robbins, MM; Alberts, SC; Reeves, ME; McFarlin, SC
Published in: Mammalian Biology
June 1, 2022

Parallel-laser photogrammetry is growing in popularity as a way to collect non-invasive body size data from wild mammals. Despite its many appeals, this method requires researchers to hand-measure (i) the pixel distance between the parallel laser spots (inter-laser distance) to produce a scale within the image, and (ii) the pixel distance between the study subject’s body landmarks (inter-landmark distance). This manual effort is time-consuming and introduces human error: a researcher measuring the same image twice will rarely return the same values both times (resulting in within-observer error), as is also the case when two researchers measure the same image (resulting in between-observer error). Here, we present two independent methods that automate the inter-laser distance measurement of parallel-laser photogrammetry images. One method uses machine learning and image processing techniques in Python, and the other uses image processing techniques in ImageJ. Both of these methods reduce labor and increase precision without sacrificing accuracy. We first introduce the workflow of the two methods. Then, using two parallel-laser datasets of wild mountain gorilla and wild savannah baboon images, we validate the precision of these two automated methods relative to manual measurements and to each other. We also estimate the reduction of variation in final body size estimates in centimeters when adopting these automated methods, as these methods have no human error. Finally, we highlight the strengths of each method, suggest best practices for adopting either of them, and propose future directions for the automation of parallel-laser photogrammetry data.

Duke Scholars

Altmetric Attention Stats
Dimensions Citation Stats

Published In

Mammalian Biology

DOI

EISSN

1618-1476

ISSN

1616-5047

Publication Date

June 1, 2022

Volume

102

Issue

3

Start / End Page

615 / 627

Related Subject Headings

  • Ecology
  • 3109 Zoology
  • 3104 Evolutionary biology
  • 0608 Zoology
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Richardson, J. L., Levy, E. J., Ranjithkumar, R., Yang, H., Monson, E., Cronin, A., … McFarlin, S. C. (2022). Automated, high-throughput image calibration for parallel-laser photogrammetry. Mammalian Biology, 102(3), 615–627. https://doi.org/10.1007/s42991-021-00174-7
Richardson, J. L., E. J. Levy, R. Ranjithkumar, H. Yang, E. Monson, A. Cronin, J. Galbany, et al. “Automated, high-throughput image calibration for parallel-laser photogrammetry.” Mammalian Biology 102, no. 3 (June 1, 2022): 615–27. https://doi.org/10.1007/s42991-021-00174-7.
Richardson JL, Levy EJ, Ranjithkumar R, Yang H, Monson E, Cronin A, et al. Automated, high-throughput image calibration for parallel-laser photogrammetry. Mammalian Biology. 2022 Jun 1;102(3):615–27.
Richardson, J. L., et al. “Automated, high-throughput image calibration for parallel-laser photogrammetry.” Mammalian Biology, vol. 102, no. 3, June 2022, pp. 615–27. Scopus, doi:10.1007/s42991-021-00174-7.
Richardson JL, Levy EJ, Ranjithkumar R, Yang H, Monson E, Cronin A, Galbany J, Robbins MM, Alberts SC, Reeves ME, McFarlin SC. Automated, high-throughput image calibration for parallel-laser photogrammetry. Mammalian Biology. 2022 Jun 1;102(3):615–627.
Journal cover image

Published In

Mammalian Biology

DOI

EISSN

1618-1476

ISSN

1616-5047

Publication Date

June 1, 2022

Volume

102

Issue

3

Start / End Page

615 / 627

Related Subject Headings

  • Ecology
  • 3109 Zoology
  • 3104 Evolutionary biology
  • 0608 Zoology