2021
DOI: 10.3390/rs13163276
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Automated Detection of Animals in Low-Resolution Airborne Thermal Imagery

Abstract: Detecting animals to estimate abundance can be difficult, particularly when the habitat is dense or the target animals are fossorial. The recent surge in the use of thermal imagers in ecology and their use in animal detections can increase the accuracy of population estimates and improve the subsequent implementation of management programs. However, the use of thermal imagers results in many hours of captured flight videos which require manual review for confirmation of species detection and identification. Th… Show more

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Cited by 18 publications
(12 citation statements)
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“…Manual detection relies on observers, and observers can be subject to biases and other factors, including fatigue, interest, skill level, training, eyesight etc. (Ulhaq et al, 2021). Fortunately, with the proper use of technology and software engineering, those hours of footage do not even have to be viewed in their entirety, but different deep learning methods can be used to identify objects in videos, where it is very easy to get information at what location, at what time, how much, and which animals were recorded.…”
Section: Methodsmentioning
confidence: 99%
“…Manual detection relies on observers, and observers can be subject to biases and other factors, including fatigue, interest, skill level, training, eyesight etc. (Ulhaq et al, 2021). Fortunately, with the proper use of technology and software engineering, those hours of footage do not even have to be viewed in their entirety, but different deep learning methods can be used to identify objects in videos, where it is very easy to get information at what location, at what time, how much, and which animals were recorded.…”
Section: Methodsmentioning
confidence: 99%
“…The recent advancement in machine learning has greatly increased the application of drone vision systems in animal detection and counting (Eikelboom et al, 2019). UAV applications cut across different tasks such as estimation of livestock population (Chabot et al, 2018;Eikelboom et al, 2019;Han et al, 2019;O'Leary et al, 2020;Ulhaq et al, 2021). Image segmentation is one of the most employed techniques for automatic detection and counting of animals in images; it works on either the instance or the semantic of objects (animals) in the images using their pixels with a specific threshold (Chabot et al, 2018;Dujon et al, 2021).…”
Section: Machine Learning-based Drone Vision Systems For Animal Detec...mentioning
confidence: 99%
“…Similarly, Yolo series [17,16,4] splits images into grid cells and make each cell to detect objects. Yolov3 has been modified and applied to animal detection using thermal images [24], demonstrating good performance in detecting small objects.…”
Section: A Object Detectionmentioning
confidence: 99%