A Bayesian Framework for the Assessment of Vision-based Weed and Fruit Detection and Classification Algorithms


Autoria(s): Perez, Tristan; Sa, Inkyu; McCool, Christopher; Lehnert, Christopher
Data(s)

30/05/2015

Resumo

This paper proposes new metrics and a performance-assessment framework for vision-based weed and fruit detection and classification algorithms. In order to compare algorithms, and make a decision on which one to use fora particular application, it is necessary to take into account that the performance obtained in a series of tests is subject to uncertainty. Such characterisation of uncertainty seems not to be captured by the performance metrics currently reported in the literature. Therefore, we pose the problem as a general problem of scientific inference, which arises out of incomplete information, and propose as a metric of performance the(posterior) predictive probabilities that the algorithms will provide a correct outcome for target and background detection. We detail the framework through which these predicted probabilities can be obtained, which is Bayesian in nature. As an illustration example, we apply the framework to the assessment of performance of four algorithms that could potentially be used in the detection of capsicums (peppers).

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/90379/

Publicador

ICRA

Relação

http://eprints.qut.edu.au/90379/1/90379_Perez.pdf

https://www.dropbox.com/s/1f9z8o35bpk8ygf/ICRA2015_ws_ProbAssessement_Final.pdf?dl=0

Perez, Tristan, Sa, Inkyu, McCool, Christopher, & Lehnert, Christopher (2015) A Bayesian Framework for the Assessment of Vision-based Weed and Fruit Detection and Classification Algorithms. In ICRA 2015 : IEEE International Conference on Robotics and Automation, 26 -30th May 2015, Seattle, Washington.

Direitos

Copyright 2015 The Authors

Fonte

Institute for Future Environments; Science & Engineering Faculty

Tipo

Conference Paper