Title:
Confidence weighted classifier combination for multi-modal human identification
Authors:
Ivanov, YuriSerre, ThomasBouvrie, Jacob
Issue Date:
22-Dec-2005
Series/Report no.:
Massachusetts Institute of Technology Computer Science and Artificial Intelligence Laboratory
Abstract:
In this paper we describe a technique of classifier combination used in a human identification system. The system integrates all available features from multi-modal sources within a Bayesian framework. The framework allows representinga class of popular classifier combination rules and methods within a single formalism. It relies on a per-class measure of confidence derived from performance of each classifier on training data that is shown to improve performance on a synthetic data set. The method is especially relevant in autonomous surveillance setting where varying time scales and missing features are a common occurrence. We show an application of this technique to the real-world surveillance database of video and audio recordings of people collected over several weeks in the office setting.
pdf file can be found at this page
https://dspace.mit.edu/handle/1721.1/30590
No comments:
Post a Comment