Skip to main content

Bayesian Image Classification with Deep Convolutional Gaussian Processes

Vincent Dutordoir‚ Mark van der Wilk‚ Artem Artemev and James Hensman

Abstract

In decision-making systems, it is important to have classifiers that have calibrated uncertainties, with an optimisation objective that can be used for automated model selection and training. Gaussian processes (GPs) provide uncertainty estimates and a marginal likelihood objective, but their weak inductive biases lead to inferior accuracy. This has limited their applicability in certain tasks (e.g. image classification). We propose a translation insensitive convolutional kernel, which relaxes the translation invariance constraint imposed by previous convolutional GPs. We show how we can use the marginal likelihood to learn the degree of insensitivity. We also reformulate GP image-to-image convolutional mappings as multi-output GPs, leading to deep convolutional GPs. We show experimentally that our new kernel improves performance in both single-layer and deep models. We also demonstrate that our fully Bayesian approach improves on dropout-based Bayesian deep learning methods in terms of uncertainty and marginal likelihood estimates.

Book Title
Proceedings of the Twenty Third International Conference on Artificial Intelligence and Statistics (AISTATS)
Editor
Chiappa‚ Silvia and Calandra‚ Roberto
Month
Aug
Pages
1529–1539
Publisher
PMLR
Series
Proceedings of Machine Learning Research
Volume
108
Year
2020