Improving ecological inference and uncertainty quantification from camera trap data through the fusion of AI confidences and manual annotations
Adira Cohen, Erin M. Schliep, Roland Kays, Mohammad Alyetama, and Matthew Snider

TL;DR
This paper introduces a Bayesian data-fusion model that combines human annotations and AI predictions from camera trap data to improve ecological inference and quantify uncertainty.
Contribution
The authors develop a novel Bayesian hierarchical model that fuses AI and manual annotations, enhancing inference accuracy and uncertainty quantification in ecological studies.
Findings
AI-human data fusion improves ecological inference accuracy.
The model reveals ecological relationships between deer health and environment.
Simulation demonstrates enhanced uncertainty quantification.
Abstract
Camera traps have become a core tool in ecological research, enabling large-scale, noninvasive monitoring of wildlife populations and behavior. By automatically recording animals as they pass within view, these devices generate massive image datasets with minimal field effort. Yet this data richness introduces a new bottleneck when translating the images into usable information due to time and effort required for human annotation. Recently, artificial intelligent (AI) has been integrated into the workflow to improve this efficiency. However, the data procured from AI approaches are of a different nature, necessitating new statistical methods in order to obtain inference, make predictions, and quantify uncertainty. We propose a new Bayesian hierarchical data-fusion model which combines the strengths of human annotations and AI predictions. The benefits of our approach are an ability to…
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