Exploiting Process Integration And Composition in The Context of Active Vision

Jeffrey A. Fayman, Paolo Pirjanian, Henrik I. Christensen, and Ehud Rivlin.
Exploiting process integration and composition in the context of active vision.
IEEE Transactions on Systems, Man, and Cybernetics, Part C, 29(1):73-86, 1999

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Abstract

The visual robustness of biological systems is in part due to their ability to actively integrate (fuse) information from a number of visual cues [2], [29]. In addition to active integration, the perception—action nature of biological vision demands event-driven behavioral composition. Providing mechanical vision systems with similar capabilities therefore requires tools and techniques for cue integration and behavioral composition. In this paper, we address two issues. First, we present a unified approach for handling both active integration and behavioral composition. The approach combines a theoretical framework that handles uncertainty using a voting scheme with a set of behaviors that are committed to achieving a specific goal through common effort and a well-known process composition model. Secondly, we address the issue of integration in the active vision activity of smooth pursuit. We have experimented with the fusion of four smooth pursuit techniques, such as template matching and image differencing. We discuss each technique, highlighting strengths and weaknesses, and then show that fusing the techniques according to our formal framework improves system tracking behavior.

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Bibtex Entry

@article{FaymanPCR99a,
  title = {Exploiting process integration and composition in the context of active vision.},
  author = {Jeffrey A. Fayman and Paolo Pirjanian and Henrik I. Christensen and Ehud Rivlin},
  year = {1999},
  journal = {IEEE Transactions on Systems, Man, and Cybernetics, Part C},
  volume = {29},
  number = {1},
  pages = {73-86},
  keywords = {Systems integration; Vision; Reliability; Robots},
  abstract = {The visual robustness of biological systems is in part due to their ability to actively integrate (fuse) information from a number of visual cues [2], [29]. In addition to active integration, the perception—action nature of biological vision demands event-driven behavioral composition. Providing mechanical vision systems with similar capabilities therefore requires tools and techniques for cue integration and behavioral composition. In this paper, we address two issues. First, we present a unified approach for handling both active integration and behavioral composition. The approach combines a theoretical framework that handles uncertainty using a voting scheme with a set of behaviors that are committed to achieving a specific goal through common effort and a well-known process composition model. Secondly, we address the issue of integration in the active vision activity of smooth pursuit. We have experimented with the fusion of four smooth pursuit techniques, such as template matching and image differencing. We discuss each technique, highlighting strengths and weaknesses, and then show that fusing the techniques according to our formal framework improves system tracking behavior.}
}