AI Article Synopsis

  • Photographic capture-recapture is an effective, noninvasive method for studying wildlife populations, utilizing computer algorithms for efficient image matching among diverse databases.
  • Different photo-matching algorithms show varied performances with recognition rates ranging from 100% to 22.6%, influenced by database size and the quality of matching images.
  • AmphIdent, a pixel-based algorithm, outperforms others in recognition rates, emphasizing the need for careful evaluation of algorithm performance for accurate demographic estimates in wildlife studies.

Article Abstract

Photographic capture-recapture is a valuable tool for obtaining demographic information on wildlife populations due to its noninvasive nature and cost-effectiveness. Recently, several computer-aided photo-matching algorithms have been developed to more efficiently match images of unique individuals in databases with thousands of images. However, the identification accuracy of these algorithms can severely bias estimates of vital rates and population size. Therefore, it is important to understand the performance and limitations of state-of-the-art photo-matching algorithms prior to implementation in capture-recapture studies involving possibly thousands of images. Here, we compared the performance of four photo-matching algorithms; Wild-ID, I3S Pattern+, APHIS, and AmphIdent using multiple amphibian databases of varying image quality. We measured the performance of each algorithm and evaluated the performance in relation to database size and the number of matching images in the database. We found that algorithm performance differed greatly by algorithm and image database, with recognition rates ranging from 100% to 22.6% when limiting the review to the 10 highest ranking images. We found that recognition rate degraded marginally with increased database size and could be improved considerably with a higher number of matching images in the database. In our study, the pixel-based algorithm of AmphIdent exhibited superior recognition rates compared to the other approaches. We recommend carefully evaluating algorithm performance prior to using it to match a complete database. By choosing a suitable matching algorithm, databases of sizes that are unfeasible to match "by eye" can be easily translated to accurate individual capture histories necessary for robust demographic estimates.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5552938PMC
http://dx.doi.org/10.1002/ece3.3140DOI Listing

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