Generating Binary Species Range Maps
- URL: http://arxiv.org/abs/2408.15956v1
- Date: Wed, 28 Aug 2024 17:17:20 GMT
- Title: Generating Binary Species Range Maps
- Authors: Filip Dorm, Christian Lange, Scott Loarie, Oisin Mac Aodha,
- Abstract summary: Species distribution models (SDMs) and, more recently, deep learning-based variants offer a potential automated alternative.
Deep learning-based SDMs generate a continuous probability representing the predicted presence of a species at a given location.
We evaluate different approaches for automatically identifying the best thresholds for binarizing range maps using presence-only data.
- Score: 12.342459602972609
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Accurately predicting the geographic ranges of species is crucial for assisting conservation efforts. Traditionally, range maps were manually created by experts. However, species distribution models (SDMs) and, more recently, deep learning-based variants offer a potential automated alternative. Deep learning-based SDMs generate a continuous probability representing the predicted presence of a species at a given location, which must be binarized by setting per-species thresholds to obtain binary range maps. However, selecting appropriate per-species thresholds to binarize these predictions is non-trivial as different species can require distinct thresholds. In this work, we evaluate different approaches for automatically identifying the best thresholds for binarizing range maps using presence-only data. This includes approaches that require the generation of additional pseudo-absence data, along with ones that only require presence data. We also propose an extension of an existing presence-only technique that is more robust to outliers. We perform a detailed evaluation of different thresholding techniques on the tasks of binary range estimation and large-scale fine-grained visual classification, and we demonstrate improved performance over existing pseudo-absence free approaches using our method.
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