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Grant Hamilton
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Bayesian estimation of recent migration rates after a spatial expansion
G Hamilton, M Currat, N Ray, G Heckel, M Beaumont, L Excoffier
Genetics 170 (1), 409-417, 2005
1552005
Molecular analysis reveals tighter social regulation of immigration in patrilocal populations than in matrilocal populations
G Hamilton, M Stoneking, L Excoffier
Proceedings of the National Academy of Sciences 102 (21), 7476-7480, 2005
1492005
Automated detection of koalas using low-level aerial surveillance and machine learning
E Corcoran, S Denman, J Hanger, B Wilson, G Hamilton
Scientific reports 9 (1), 3208, 2019
962019
An integrated Bayesian network approach to Lyngbya majuscula bloom initiation
S Johnson, F Fielding, G Hamilton, K Mengersen
Marine environmental research 69 (1), 27-37, 2010
862010
Comment on" Genetic structure of human populations"
L Excoffier, G Hamilton
Science 300 (5627), 1877-1877, 2003
842003
Investigating the Use of a Bayesian Network to Model the Risk of Lyngbya majuscula Bloom Initiation in Deception Bay, Queensland, Australia
GS Hamilton, F Fielding, AW Chiffings, BT Hart, RW Johnstone, ...
Human and Ecological Risk Assessment 13 (6), 1271-1287, 2007
832007
Automated detection of wildlife using drones: Synthesis, opportunities and constraints
E Corcoran, M Winsen, A Sudholz, G Hamilton
Methods in Ecology and Evolution 12 (6), 1103-1114, 2021
742021
Bayesian model averaging for harmful algal bloom prediction
G Hamilton, R McVinish, K Mengersen
Ecological Applications 19 (7), 1805-1814, 2009
482009
Assessment of crop insect damage using unmanned aerial systems: A machine learning approach
E Puig Garcia, F Gonzalez, G Hamilton, P Grundy
Proceedings of MODSIM2015, 21st International Congress on Modelling and …, 2015
442015
Learning to fly: integrating spatial ecology with unmanned aerial vehicle surveys
PWJ Baxter, G Hamilton
Ecosphere 9 (4), e02194, 2018
432018
An approximate Bayesian computation approach for estimating parameters of complex environmental processes in a cellular automata
R Rasmussen, G Hamilton
Environmental Modelling & Software 29 (1), 1-10, 2012
402012
Habitat heterogeneity influences connectivity in a spatially structured pest population
GS Hamilton, PB Mather, JC Wilson
Journal of Applied Ecology 43 (2), 219-226, 2006
352006
Evaluating new technology for biodiversity monitoring: Are drone surveys biased?
E Corcoran, S Denman, G Hamilton
Ecology and Evolution 11 (11), 6649-6656, 2021
222021
Integrating science through Bayesian belief networks: case study of Lyngbya in Moreton Bay
G Hamilton, C Alston, T Chiffings, E Abal, B Hart, K Mengersen
International Congress on Modelling and Simulation (MODSIM05), 392-399, 2005
172005
New technologies in the mix: Assessing N‐mixture models for abundance estimation using automated detection data from drone surveys
E Corcoran, S Denman, G Hamilton
Ecology and evolution 10 (15), 8176-8185, 2020
162020
From Science to Management: Using Bayesian Networks to Learn about" Lyngbya"
S Johnson, E Abal, K Ahern, G Hamilton
Statistical Science, 36-41, 2014
162014
When you can't see the koalas for the trees: Using drones and machine learning in complex environments
G Hamilton, E Corcoran, S Denman, ME Hennekam, LP Koh
Biological Conservation 247, 108598, 2020
152020
Improving detection probabilities for pests in stored grain
D Elmouttie, A Kiermeier, G Hamilton
Pest management science 66 (12), 1280-1286, 2010
152010
A comparison of manual and automated detection of rusa deer (Rusa timorensis) from RPAS-derived thermal imagery
A Sudholz, S Denman, A Pople, M Brennan, M Amos, G Hamilton
Wildlife Research 49 (1), 46-53, 2021
102021
The ethics of biosurveillance
SK Devitt, PWJ Baxter, G Hamilton
Journal of Agricultural and Environmental Ethics 32 (5), 709-740, 2019
102019
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Articles 1–20