Many decision models that are based on Dempster-Shafer belief functions involve the elicitation of subjective belief data from a group of experts based on qualitative preferences. Given that a major reason for using a group is the assumption that the combined group judgment is likely superior to ind
Dempster–Shafer models for object recognition and classification
✍ Scribed by A.P. Dempster; Wai Fung Chiu
- Publisher
- John Wiley and Sons
- Year
- 2006
- Tongue
- English
- Weight
- 140 KB
- Volume
- 21
- Category
- Article
- ISSN
- 0884-8173
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✦ Synopsis
We consider situations in which each individual member of a defined object set is characterized uniquely by a set of variables, and we propose models and associated methods that recognize or classify a newly observed individual. Inputs consist of uncertain observations on the new individual and on a memory bank of previously identified individuals. Outputs consist of uncertain inferences concerning degrees of agreement between the new object and previously identified objects or object classes, with inferences represented by Dempster-Shafer belief functions. We illustrate the approach using models constructed from independent simple support belief functions defined on binary variables. In the case of object recognition, our models lead to marginal belief functions concerning how well the new object matches objects in memory. In the classification model, we compute beliefs and plausibilities that the new object lies in defined subsets of an object set. When regarded as similarity measures, our belief and plausibility functions can be interpreted as candidate membership functions in the terminology of fuzzy logic.
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