Article ID Journal Published Year Pages File Type
565105 Signal Processing 2006 14 Pages PDF
Abstract

The automatic classification of images is now widely used in a range of applications. These include the diagnosis of arthritis from joint images, the classification of environmental noise from spectrograms and automatic text analysis. However, satisfactory performance is difficult to achieve in uncontrolled environments, as images are often contaminated by high levels of noise, outliers and global contamination due to illumination changes and environmental effects. We address these issues using a semi-parametric modelling strategy and a novel robust Bayesian classifier. This model is driven by additive Gaussian noise with non-uniform variance to describe outliers and uses the parametric and non-parametric components to describe contamination of different types. We assess the performance of our approach in two experiments based on real and simulated data. These show that our approach can significantly outperform a number of competitors in uncontrolled environments.

Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
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