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2020
DOI: 10.21203/rs.3.rs-109464/v1
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Timely poacher detection and localization using sentinel animal movement

Abstract: Wildlife crime is one of the most profitable illegal industries worldwide. Current actions to reduce it are far from effective and fail to prevent population declines of many endangered species, pressing the need for innovative anti-poaching solutions. Here, we propose and test a real-time poacher early warning system that is based on the movement responses of non-targeted sentinel animals, which naturally respond to threats by fleeing and changing herd topology. We analyzed human-evasive movement patterns of … Show more

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Cited by 4 publications
(9 citation statements)
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References 29 publications
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“…As demonstrated by the rising field of hybrid environmental algorithms (leveraging both DL and bio-physical models 48,49 ) and, more broadly, by theory-guided data science 50 , such hybrid models tend to be less data-intensive, avoid incoherent predictions, and are generally more interpretable than 61 was used to detect Carolina wren vocalizations in more than 35,000 h of passive acoustic monitoring data from Ithaca, New York, allowing researchers to document the gradual recovery of the population following a harsh winter season in 2015. b Machine-learning algorithms were used to analyze movement of savannah herbivores fitted with bio-logging devices in order to identify human threats. The method can localize human intruders to within 500 m, suggesting `sentinel animals' may be a useful tool in the fight against wildlife poaching 148 . c TRex, a new image-based tracking software, can track the movement and posture of hundreds of individually-recognized animals in real-time.…”
mentioning
confidence: 99%
“…As demonstrated by the rising field of hybrid environmental algorithms (leveraging both DL and bio-physical models 48,49 ) and, more broadly, by theory-guided data science 50 , such hybrid models tend to be less data-intensive, avoid incoherent predictions, and are generally more interpretable than 61 was used to detect Carolina wren vocalizations in more than 35,000 h of passive acoustic monitoring data from Ithaca, New York, allowing researchers to document the gradual recovery of the population following a harsh winter season in 2015. b Machine-learning algorithms were used to analyze movement of savannah herbivores fitted with bio-logging devices in order to identify human threats. The method can localize human intruders to within 500 m, suggesting `sentinel animals' may be a useful tool in the fight against wildlife poaching 148 . c TRex, a new image-based tracking software, can track the movement and posture of hundreds of individually-recognized animals in real-time.…”
mentioning
confidence: 99%
“…The GPS sensors collected spatial positions with a frequency ranging between 15 and 2 minutes, depending on the amount of body activity as determined by the accelerometer (see de Knegt et al, 2021).…”
Section: Animal Movement Datamentioning
confidence: 99%
“…The position data were corrected, smoothed and modelled to regular ten-minute resolution trajectories as described in de Knegt et al (2021). Due to sensor failures, we selected from each species only the ten individuals with the most recorded data in the period from September to December 2017 (the first four months of the study period, during which the sensors collected most data).…”
Section: Animal Movement Datamentioning
confidence: 99%
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“…Insights from animal tracking studies are regularly incorporated in policy and conservation management [5,15]. For example, identifying important areas for the protection of migration routes [16,17], detecting wildlife crime [18,19], and quantifying the human-wildlife conflict [20].…”
Section: Introductionmentioning
confidence: 99%