Detecting and monitoring rodents using camera traps and machine learning versus live trapping for occupancy modeling

被引:2
|
作者
Hopkins, Jaran [1 ]
Santos-Elizondo, Gabriel Marcelo [1 ]
Villablanca, Francis [1 ]
机构
[1] Calif Polytech State Univ San Luis Obispo, Dept Biol Sci, San Luis Obispo, CA 93407 USA
来源
关键词
detection; occupancy; machine learning; effort; camera trapping; live trapping; ESTIMATING SITE OCCUPANCY; DETECTION PROBABILITY PARAMETERS; SMALL MAMMALS; CONSPECIFIC ODORS; BIODIVERSITY LOSS; R PACKAGE; IDENTIFICATION; IMPACT; TRAPPABILITY; ABUNDANCE;
D O I
10.3389/fevo.2024.1359201
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
Determining best methods to detect individuals and monitor populations that balance effort and efficiency can assist conservation and land management. This may be especially true for small, non-charismatic species, such as rodents (Rodentia), which comprise 39% of all mammal species. Given the importance of rodents to ecosystems, and the number of listed species, we tested two commonly used detection and monitoring methods, live traps and camera traps, to determine their efficiency in rodents. An artificial-intelligence machine-learning model was developed to process the camera trap images and identify the species within them which reduced camera trapping effort. We used occupancy models to compare probability of detection and occupancy estimates for six rodent species across the two methods. Camera traps yielded greater detection probability and occupancy estimates for all six species. Live trapping yielded biasedly low estimates of occupancy, required greater effort, and had a lower probability of detection. Camera traps, aimed at the ground to capture the dorsal view of an individual, combined with machine learning provided a practical, noninvasive, and low effort solution to detecting and monitoring rodents. Thus, camera trapping with machine learning is a more sustainable and practical solution for the conservation and land management of rodents.
引用
收藏
页数:17
相关论文
共 33 条
  • [21] Managing African Swine Fever: Assessing the Potential of Camera Traps in Monitoring Wild Boar Occupancy Trends in Infected and Non-infected Zones, Using Spatio-Temporal Statistical Models
    Bollen, Martijn
    Neyens, Thomas
    Fajgenblat, Maxime
    De Waele, Valerie
    Licoppe, Alain
    Manet, Benoit
    Casaer, Jim
    Beenaerts, Natalie
    FRONTIERS IN VETERINARY SCIENCE, 2021, 8
  • [22] Carrier Phase Residual Modeling and Fault Monitoring Using Short-Baseline Double Difference and Machine Learning
    Lee, Dong-Kyeong
    Lee, Yebin
    Park, Byungwoon
    MATHEMATICS, 2023, 11 (12)
  • [23] Modeling and monitoring cotton production using remote sensing techniques and machine learning: a case study of Punjab, Pakistan
    Hasan, Sher Shah
    Goheer, Muhammad Arif
    Uzair, Muhammad
    Fatima, Saba
    ENVIRONMENT DEVELOPMENT AND SUSTAINABILITY, 2024,
  • [24] Smart Malaria Classification: A Novel Machine Learning Algorithms for Early Malaria Monitoring and Detecting Using IoT-Based Healthcare Environment
    Ayalew, Aleka Melese
    Admass, Wasyihun Sema
    Abuhayi, Biniyam Mulugeta
    Negashe, Girma Sisay
    Bezabh, Yohannes Agegnehu
    SENSING AND IMAGING, 2024, 25 (01):
  • [25] A comparison of sexual selection versus random selection with respect to extinction and speciation rates using individual based modeling and machine learning
    Bhattacharjee, Sourodeep
    MacPherson, Brian
    Gras, Robin
    ECOLOGICAL COMPLEXITY, 2018, 36 : 126 - 137
  • [26] Development of the Cloud Monitoring Program using Machine Learning-based Python']Python Module from the MAAO All-sky Camera Images
    Lim, Gu
    Kim, Dohyeong
    Kim, Donghyun
    Park, Keun-Hong
    JOURNAL OF THE KOREAN EARTH SCIENCE SOCIETY, 2024, 45 (02): : 111 - 120
  • [27] Assessment of Machine Learning Algorithms for Automatic Benthic Cover Monitoring and Mapping Using Towed Underwater Video Camera and High-Resolution Satellite Images
    Mohamed, Hassan
    Nadaoka, Kazuo
    Nakamura, Takashi
    REMOTE SENSING, 2018, 10 (05):
  • [28] Presenting a soft sensor for monitoring and controlling well health and pump performance using machine learning, statistical analysis, and Petri net modeling
    Amini, Mohammad Hossein
    Arab, Maliheh
    Faramarz, Mahdieh Ghiyasi
    Ghazikhani, Adel
    Gheibi, Mohammad
    ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2021,
  • [29] Detecting PVC Beats by Beat-by-beat Analysis of ECG Signals Using Machine Learning Classifiers for Real-time Predictive Cardiac Health Monitoring
    Tsai, I. Hua
    Morshed, Bashir I.
    2022 IEEE 13TH ANNUAL UBIQUITOUS COMPUTING, ELECTRONICS & MOBILE COMMUNICATION CONFERENCE (UEMCON), 2022, : 355 - 361
  • [30] Detecting MLC modeling errors using radiomics-based machine learning in patient-specific QA with an EPID for intensity-modulated radiation therapy
    Sakai, Madoka
    Nakano, Hisashi
    Kawahara, Daisuke
    Tanabe, Satoshi
    Takizawa, Takeshi
    Narita, Akihiro
    Yamada, Takumi
    Sakai, Hironori
    Ueda, Masataka
    Sasamoto, Ryuta
    Kaidu, Motoki
    Aoyama, Hidefumi
    Ishikawa, Hiroyuki
    Utsunomiya, Satoru
    MEDICAL PHYSICS, 2021, 48 (03) : 991 - 1002