4.7 Article

Identification and Counting of European Souslik Burrows from UAV Images by Pixel-Based Image Analysis and Random Forest Classification: A Simple, Semi-Automated, yet Accurate Method for Estimating Population Size

Journal

REMOTE SENSING
Volume 14, Issue 9, Pages -

Publisher

MDPI
DOI: 10.3390/rs14092025

Keywords

population size; random forest; pixel-based imagery; image processing; model stability

Funding

  1. Hungarian Academy of Sciences [PREMIUM-2019-390]
  2. Human Resource Supporter grants [NTP-NFTO-20-B-0022, NTP-NFTO-20-B-0017]
  3. Hungarian National Research, Development and Innovation Office (NKFIH) [K-131820]

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This study introduces an imagery-based method to semi-automatically identify and count animal burrows by combining remotely recorded RGB images and RF classification. By collecting and processing field images, accurate estimation of population abundance and delineation of occupancy areas can be achieved.
Burrowing mammals such as European sousliks are widespread and contribute significantly to soil ecosystem services. However, they have declined across their range and the non-invasive estimation of their actual population size has remained a challenge. Results support that the number of burrow entrances is positively correlated with population abundance, and burrow locations indicate the occupied area. We present an imagery-based method to identify and count animals' burrows semi-automatically by combining remotely recorded red, green, and blue (RGB) images, pixel-based imagery, and random forest (RF) classification. Field images were collected for four colonies, then combined and processed by histogram matching and spectral band normalization to improve the spectral distinctions among the categories BURROW, SOIL, TREE, and GRASS. The accuracy indexes of classification for BURROW kappa (kappa) were 95% (precision) and 90% (sensitivity). A 10-iteration bootstrapping of the final model resulted in coefficients of variation (CV%) of BURROW kappa for sensitivity and precision lower than 5%; moreover, CV% values were not significantly different between those scores. The consistency of classification and balanced precision and sensitivity confirmed the applicability of this approach. Our approach provides an accurate, user-friendly, and relatively simple approach to count the number of burrow openings, estimate population abundance, and delineate the areas of occupancy non-invasively.

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