Fagner Cunha

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Hi! My name is Fagner. I am a PhD candidate at UFAM, supervised by Professor Eulanda Miranda dos Santos. I develop computer vision solutions for ecological monitoring challenges under real-world constraints, such as those posed by camera-trap data.

My work bridges applied research and real-world problem-solving, addressing challenges like fine-grained classification, extremely imbalanced long-tailed distributions, hierarchical prediction, and domain shift.

I have solid experience in dataset curation, training deep learning models, and optimizing them for embedded systems. I’ve collaborated with institutions such as Mila - Quebec Artificial Intelligence Institute, working in David Rolnick’s group, and the Mamirauá Institute, combining state-of-the-art deep learning solutions with biodiversity monitoring efforts.

News

Jun 06, 2025 :rocket: Exciting news! I presented my PhD qualifying exam today! Feeling proud of this milestone and motivated to keep pushing forward.
May 06, 2024 Our paper “Towards a standardized framework for AI-assisted, image-based monitoring of nocturnal insects” is available online on Philosophical Transactions B.
Mar 20, 2024 Our paper “Insect Identification in the Wild: The AMI Dataset” has been accepted as an oral presentation at ECCV 2024! :tada: :tada:

Selected Publications

  1. CVPR
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    Filtering Empty Camera Trap Images in Embedded Systems
    Fagner Cunha, Eulanda M. Santos, Raimundo Barreto, and 1 more author
    In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR) Workshops, Jun 2021
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    Bag of tricks for long-tail visual recognition of animal species in camera-trap images
    Fagner Cunha, Eulanda M Santos, and Juan G Colonna
    Ecological Informatics, Jun 2023
  3. ECCV
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    Insect Identification in the Wild: The AMI Dataset
    Aditya Jain*, Fagner Cunha*, Michael James Bunsen*, and 25 more authors
    In European Conference on Computer Vision, Jun 2024