Saliency Based on Information Maximization
Abstract
A model of bottom-up overt attention is proposed based on the principle of maximizing information sampled from a scene. The proposed operation is based on Shannon's self-information measure and is achieved in a neural circuit, which is demonstrated as having close ties with the circuitry existent in die primate visual cortex. It is further shown that the proposed salicney measure may be extended to address issues that currently elude explanation in the domain of saliency based models. Results on natural images are compared with experimental eye tracking data revealing the efficacy of the model in predicting the deployment of overt attention as compared with existing efforts.
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Topics
Keywords
- Maximization
- Computer science
- Measure (data warehouse)
- Artificial intelligence
- Domain (mathematical analysis)
- Software deployment
- Computer vision
- Visual attention
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