MiTREE: Multi-input Transformer Ecoregion Encoder for Species Distribution Modelling
Theresa Chen, Yao-Yi Chiang

TL;DR
MiTREE is a novel multi-input transformer model that effectively integrates spatial, ecological, and location data for improved species distribution modeling, addressing limitations of traditional methods.
Contribution
Introduces MiTREE, a multi-input Vision-Transformer with an ecoregion encoder, enabling spatial relationship learning without upsampling and incorporating ecological context.
Findings
Outperforms state-of-the-art baselines on SatBird datasets.
Effectively models spatial cross-modal relationships.
Enhances species encounter rate predictions.
Abstract
Climate change poses an extreme threat to biodiversity, making it imperative to efficiently model the geographical range of different species. The availability of large-scale remote sensing images and environmental data has facilitated the use of machine learning in Species Distribution Models (SDMs), which aim to predict the presence of a species at any given location. Traditional SDMs, reliant on expert observation, are labor-intensive, but advancements in remote sensing and citizen science data have facilitated machine learning approaches to SDM development. However, these models often struggle with leveraging spatial relationships between different inputs -- for instance, learning how climate data should inform the data present in satellite imagery -- without upsampling or distorting the original inputs. Additionally, location information and ecological characteristics at a location…
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