Monash University
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Understanding insect-habitat interactions from image-based data using computer vision and deep learning techniques

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thesis
posted on 2025-05-21, 01:24 authored by Sesa Singha Roy
This thesis integrates insect ecology with computer vision and machine learning to analyze insect image backgrounds and their habitats. Using over 250,000 images from the Atlas of Living Australia, we developed a deep learning model to classify image backgrounds as natural or anthropogenic, introducing a "naturalness score" to quantify habitat use. Our findings highlight biases in insect photography, such as nocturnal moths photographed on artificial surfaces and aesthetically pleasing insects in natural settings, affecting habitat representation. By addressing these biases, the research provides new insights into insect-environment interactions, offering valuable tools for ecologists and conservationists to improve biodiversity monitoring and management.

History

Campus location

Australia

Principal supervisor

Alan Dorin

Additional supervisor 1

Scarlett Howard

Year of Award

2025

Department, School or Centre

Data Science & Artificial Intelligence

Course

Doctor of Philosophy

Degree Type

DOCTORATE

Faculty

Faculty of Information Technology

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