Implementation and Evaluation of a Computational Model of Attention for Computer Vision

Author:

Da Silva Matthieu Perreira1,Courboulay Vincent2

Affiliation:

1. IRCCyN – University of Nantes, France

2. L3i – University of La Rochelle, France

Abstract

In the field of scene analysis for computer vision, a trade-off must be found between the quality of the results expected and the amount of computer resources allocated for each task. Using an adaptive vision system provides a more flexible solution as its analysis strategy can be changed according to the information available concerning the execution context. The authors describe how to create and evaluate a visual attention system tailored for interacting with a computer vision system so that it adapts its processing according to the interest (or salience) of each element of the scene. The authors propose a new set of constraints called ‘PAIRED’ to evaluate the adequacy of a model with respect to its different applications. The authors then justify why dynamical systems are a good choice for visual attention simulation, and we show that predator-prey models provide good properties for simulating the dynamic competition between different kinds of information. They present different results (cross-correlation, Kullback-Leibler divergence, normalized scanpath salience) that demonstrate that, in spite of being fast and highly configurable, their results are as plausible as existing models designed for high biological fidelity.

Publisher

IGI Global

Reference96 articles.

1. Achanta, R., Estrada, F., Wils, P., & Süsstrunk, S. (2008). Salient region detection and segmentation. 6th International Conference on Computer Vision Systems, ICVS (pp. 66-75). Berlin, Germany: Springer.

2. Ahmad, S. (1992). VISIT: An efficient computational model of human visual attention. University of Illinois at Urbana-Champaign, Champaign, IL, (510). Citeseer.

3. Allport, D. A. (1987). Selection for action: Some behavioral and neurophysiological considerations of attention and action. In H. Heuer & S. A.F. (Eds.), Perspectives on perception and action (pp. 395-419). Hillsdale, NJ: Lawrence Erlbaum Associates.

4. Esaliency (Extended Saliency): Meaningful Attention Using Stochastic Image Modeling

5. Fast and Robust Generation of Feature Maps for Region-Based Visual Attention

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