MRI Gastric Images Processing using a Multiobjective Fly Algorithm

Research output: Contribution to conferencePaperpeer-review

Standard Standard

MRI Gastric Images Processing using a Multiobjective Fly Algorithm. / Al-Maliki, Shatha; Lutton, Evelyne; Boue, Francois et al.
2018. Paper presented at Evolutionary Machine Learning, Coimbra, Portugal.

Research output: Contribution to conferencePaperpeer-review

HarvardHarvard

Al-Maliki, S, Lutton, E, Boue, F & Vidal, F 2018, 'MRI Gastric Images Processing using a Multiobjective Fly Algorithm', Paper presented at Evolutionary Machine Learning, Coimbra, Portugal, 8/09/18.

APA

Al-Maliki, S., Lutton, E., Boue, F., & Vidal, F. (2018). MRI Gastric Images Processing using a Multiobjective Fly Algorithm. Paper presented at Evolutionary Machine Learning, Coimbra, Portugal.

CBE

Al-Maliki S, Lutton E, Boue F, Vidal F. 2018. MRI Gastric Images Processing using a Multiobjective Fly Algorithm. Paper presented at Evolutionary Machine Learning, Coimbra, Portugal.

MLA

Al-Maliki, Shatha et al. MRI Gastric Images Processing using a Multiobjective Fly Algorithm. Evolutionary Machine Learning, 08 Sept 2018, Coimbra, Portugal, Paper, 2018.

VancouverVancouver

Al-Maliki S, Lutton E, Boue F, Vidal F. MRI Gastric Images Processing using a Multiobjective Fly Algorithm. 2018. Paper presented at Evolutionary Machine Learning, Coimbra, Portugal.

Author

Al-Maliki, Shatha ; Lutton, Evelyne ; Boue, Francois et al. / MRI Gastric Images Processing using a Multiobjective Fly Algorithm. Paper presented at Evolutionary Machine Learning, Coimbra, Portugal.

RIS

TY - CONF

T1 - MRI Gastric Images Processing using a Multiobjective Fly Algorithm

AU - Al-Maliki, Shatha

AU - Lutton, Evelyne

AU - Boue, Francois

AU - Vidal, Franck

PY - 2018/9/8

Y1 - 2018/9/8

N2 - When dealing with rare and sparse data, like the ones collected during a long and expensive experimental process, machine learning is used in a different perspective. In this context, optimisation-based approaches combined with user visualisation and interactions are sometimes the best way to cope with modelling issues. We present here an example related to an experimental project aiming at understanding the kinetics of gastric emptying using MRI images of the stomach of healthy volunteers. We show how a cooperation/co-evolution algorithm, the ``Fly Algorithm'', can be made multi-objective, and its output, a complex Pareto Front, analysed using interactive Information Visualization (InfoVis) and clustering.

AB - When dealing with rare and sparse data, like the ones collected during a long and expensive experimental process, machine learning is used in a different perspective. In this context, optimisation-based approaches combined with user visualisation and interactions are sometimes the best way to cope with modelling issues. We present here an example related to an experimental project aiming at understanding the kinetics of gastric emptying using MRI images of the stomach of healthy volunteers. We show how a cooperation/co-evolution algorithm, the ``Fly Algorithm'', can be made multi-objective, and its output, a complex Pareto Front, analysed using interactive Information Visualization (InfoVis) and clustering.

M3 - Paper

T2 - Evolutionary Machine Learning

Y2 - 8 September 2018

ER -