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Paul Fergus

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Removing Human Bottlenecks in Bird Classification Using Camera Trap Images and Deep Learning

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May 03, 2023
Carl Chalmers, Paul Fergus, Serge Wich, Steven N Longmore, Naomi Davies Walsh, Philip Stephens, Chris Sutherland, Naomi Matthews, Jens Mudde, Amira Nuseibeh

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Empowering Wildlife Guardians: An Equitable Digital Stewardship and Reward System for Biodiversity Conservation using Deep Learning and 3/4G Camera Traps

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Apr 25, 2023
Paul Fergus, Carl Chalmers, Steven Longmore, Serge Wich, Carmen Warmenhove, Jonathan Swart, Thuto Ngongwane, André Burger, Jonathan Ledgard, Erik Meijaard

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Pressure Ulcer Categorisation using Deep Learning: A Clinical Trial to Evaluate Model Performance

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Mar 07, 2022
Paul Fergus, Carl Chalmers, William Henderson, Danny Roberts, Atif Waraich

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Choosing an Appropriate Platform and Workflow for Processing Camera Trap Data using Artificial Intelligence

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Feb 04, 2022
Juliana Vélez, Paula J. Castiblanco-Camacho, Michael A. Tabak, Carl Chalmers, Paul Fergus, John Fieberg

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Real-Time Predictive Maintenance using Autoencoder Reconstruction and Anomaly Detection

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Oct 01, 2021
Sean Givnan, Carl Chalmers, Paul Fergus, Sandra Ortega, Tom Whalley

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Detection of Obstructive Sleep Apnoea Using Features Extracted from Segmented Time-Series ECG Signals Using a One Dimensional Convolutional Neural Network

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Feb 03, 2020
Steven Thompson, Paul Fergus, Carl Chalmers, Denis Reilly

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SAERMA: Stacked Autoencoder Rule Mining Algorithm for the Interpretation of Epistatic Interactions in GWAS for Extreme Obesity

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Aug 27, 2019
Casimiro Aday Curbelo Montañez, Paul Fergus, Carl Chalmers, Nurul Ahamed Hassain Malim, Basma Abdulaimma, Denis Reilly, Francesco Falciani

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Modelling Segmented Cardiotocography Time-Series Signals Using One-Dimensional Convolutional Neural Networks for the Early Detection of Abnormal Birth Outcomes

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Aug 06, 2019
Paul Fergus, Carl Chalmers, Casimiro Curbelo Montanez, Denis Reilly, Paulo Lisboa, Beth Pineles

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Extracting Epistatic Interactions in Type 2 Diabetes Genome-Wide Data Using Stacked Autoencoder

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Aug 28, 2018
Basma Abdulaimma, Paul Fergus, Carl Chalmers

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Analysis of Extremely Obese Individuals Using Deep Learning Stacked Autoencoders and Genome-Wide Genetic Data

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Aug 24, 2018
Casimiro A. Curbelo Montañez, Paul Fergus, Carl Chalmers, Jade Hind

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