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Overcoming the Distance Estimation Bottleneck in Camera Trap Distance Sampling

2021-05-10 10:17:34
Timm Haucke, Hjalmar S. Kühl, Jacqueline Hoyer, Volker Steinhage

Abstract

Biodiversity crisis is still accelerating. Estimating animal abundance is of critical importance to assess, for example, the consequences of land-use change and invasive species on species composition, or the effectiveness of conservation interventions. Camera trap distance sampling (CTDS) is a recently developed monitoring method providing reliable estimates of wildlife population density and abundance. However, in current applications of CTDS, the required camera-to-animal distance measurements are derived by laborious, manual and subjective estimation methods. To overcome this distance estimation bottleneck in CTDS, this study proposes a completely automatized workflow utilizing state-of-the-art methods of image processing and pattern recognition.

Abstract (translated)

URL

https://arxiv.org/abs/2105.04244

PDF

https://arxiv.org/pdf/2105.04244.pdf


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