학술논문

Multispecies facial detection for individual identification of wildlife: a case study across ursids
Document Type
Case study
Source
Mammalian Biology. June, 2022, Vol. 102 Issue 3, p943, 13 p.
Subject
Neural network
Wildlife -- Case studies -- Protection and preservation -- Analysis
Detectors -- Case studies -- Analysis -- Protection and preservation
Image processing -- Case studies -- Protection and preservation -- Analysis
Wildlife conservation -- Case studies -- Protection and preservation -- Analysis
Machine vision -- Case studies -- Analysis -- Protection and preservation
Neural networks -- Case studies -- Analysis -- Protection and preservation
Language
English
ISSN
1616-5047
Abstract
To address biodiversity decline in the era of big data, replicable methods of data processing are needed. Automated methods of individual identification (ID) via computer vision are valuable in conservation research and wildlife management. Rapid and systematic methods of image processing and analysis are fundamental to an ever-growing need for effective conservation research and practice. Bears (ursids) are an interesting test system for examining computer vision techniques for wildlife, as they have variable facial morphology, variable presence of individual markings, and are challenging to research and monitor. We leveraged existing imagery of bears living under human care to develop a multispecies bear face detector, a critical part of individual ID pipelines. We compared its performance across species and on a pre-existing wild brown bear Ursus arctos dataset (BearID), to examine the robustness of convolutional neural networks trained on animals under human care. Using the multispecies bear face detector and retrained sub-applications of BearID, we prototyped an end-to-end individual ID pipeline for the declining Andean bear Tremarctos ornatus. Our multispecies face detector had an average precision of 0.91-1.00 across all eight bear species, was transferable to images of wild brown bears (AP = 0.93), and correctly identified individual Andean bears in 86% of test images. These preliminary results indicate that a multispecies-trained network can detect faces of a single species sufficiently to achieve high-performance individual classification, which could speed-up the transferability and application of automated individual ID to a wider range of taxa.
Author(s): Melanie Clapham [sup.1] [sup.2], Ed Miller [sup.2], Mary Nguyen [sup.2], Russell C. Van Horn [sup.3] Author Affiliations: (1) grid.143640.4, 0000 0004 1936 9465, Department of Geography, University of Victoria, [...]