Advancing primate surveillance with image recognition techniques from unmanned aerial vehicles

Author:

He Gang1,Zhang Xiao1,Wang Jie1,Xu Pengfei2,Hou Xiduo1,Dong Wei3,Lei Yinghu4,Jin Xuelin5,Wang Weifeng6,Tian Wenyong7,Huang Yan8,Li Desheng8,Qin Tianyu1,Wang Jing1,Pan Ruliang1910,Li Baoguo1511,Guo Songtao1ORCID

Affiliation:

1. Shaanxi Key Laboratory for Animal Conservation, College of Life Sciences Northwest University Xi'an China

2. School of Information Science and Technology Northwest University Xi'an China

3. Management Bureau of Shaanxi Changqing National Nature Reserve Hanzhong China

4. Research Center for the Qinling Giant Panda (Shaanxi Rare Wildlife Rescue Base) Shaanxi Academy of Forestry Sciences Xi'an China

5. Shaanxi Institute of Zoology, Shaanxi Academy of Sciences Xi'an China

6. Shaanxi Nature Reserve and Wildlife Management Station, Shaanxi Forestry Bureau Xi'an China

7. Management Bureau of Shaanxi Zhouzhi National Nature Reserve Xi'an China

8. China Conservation and Research Center for Giant Panda Chengdu China

9. International Centre of Biodiversity and Primate Conservation, Dali University Dali China

10. School of Anatomy, Physiology and Human Biology University of Western Australia Crawley Western Australia Australia

11. College of Life Science Yanan University Yanan China

Abstract

AbstractUsing unmanned aerial vehicles (UAVs) for surveys on thermostatic animals has gained prominence due to their ability to provide practical and precise dynamic censuses, contributing to developing and refining conservation strategies. However, the practical application of UAVs for animal monitoring necessitates the automation of image interpretation to enhance their effectiveness. Based on our past experiences, we present the Sichuan snub‐nosed monkey (Rhinopithecus roxellana) as a case study to illustrate the effective use of thermal cameras mounted on UAVs for monitoring monkey populations in Qinling, a region characterized by magnificent biodiversity. We used the local contrast method for a small infrared target detection algorithm to collect the total population size. Through the experimental group, we determined the average optimal grayscale threshold, while the validation group confirmed that this threshold enables automatic detection and counting of target animals in similar datasets. The precision rate obtained from the experiments ranged from 85.14% to 97.60%. Our findings reveal a negative correlation between the minimum average distance between thermal spots and the count of detected individuals, indicating higher interference in images with closer thermal spots. We propose a formula for adjusting primate population estimates based on detection rates obtained from UAV surveys. Our results demonstrate the practical application of UAV‐based thermal imagery and automated detection algorithms for primate monitoring, albeit with consideration of environmental factors and the need for data preprocessing. This study contributes to advancing the application of UAV technology in wildlife monitoring, with implications for conservation management and research.

Funder

Key Research and Development Projects of Shaanxi Province

National Natural Science Foundation of China

Publisher

Wiley

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