
Banff International Research Station for Mathematical Innovation and Discovery
Li, Hao
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2019-09-17
Applications such as police body-worn video cameras generate a huge amount of data, beyond what is humanly possible for analysts to review. Such problems are ripe for the development of semi-supervised learning algorithms, which, by definition, use a small amount of training data. We introduce an uncertainty quantification (UQ) method for graph-based semi-supervised multi-class classification problems. We not only predict the class label for each data point but also provide a confidence score for the prediction. We adopt a Bayesian approach and propose a graphical multi-class probit model together with an effective Gibbs sampling procedure. Furthermore, we propose a confidence measure for each data point that correlates with the classification performance. We use the empirical properties of the proposed confidence measure to guide the design of a human-in-the-loop system. The uncertainty quantification algorithm and the human-in-the-loop system are successfully applied to classification problems in image processing and ego-motion analysis of body-worn videos.
Non UBC
Unreviewed
Author affiliation: UCLA
Graduate
http://creativecommons.org/licenses/by-nc-nd/4.0/