Dana Harry Ballard (1946–2022) was a professor of computer science at the University of Texas at Austin and formerly with the University of Rochester.[1]

Dana Harry Ballard
Born1946
Died2022
EducationMassachusetts Institute of Technology (BS), University of Michigan (MS), University of California, Irvine (PhD)
Known forContributions to computer vision, generalized Hough Transform, predictive coding in visual cortex
Notable workComputer Vision (with Christopher M. Brown), An Introduction to Natural Computation, Brain Computation as Hierarchical Abstraction
Scientific career
FieldsComputer science, Artificial intelligence, Cognitive science
InstitutionsUniversity of Texas at Austin, University of Rochester

Ballard attended MIT and graduated in 1967 with his bachelor's degree in aeronautics and astronautics. He then attended the University of Michigan for his masters in information and control engineering in 1970. He received his Ph.D. from the University of California, Irvine in information engineering in 1974.[1] He did research in artificial intelligence and human cognition and perception with a focus on the human visual system. In 1982, with Christopher M. Brown he authored a pioneering textbook in the field of computer vision, titled Computer Vision.[2] He also popularized the use of the generalised hough transform in computer vision in his paper "Generalizing the Hough Transform to Detect Arbitrary Shapes."[3] He is also known as a proponent of active vision techniques for computer vision systems [4] as well as approaches to understanding human vision.[5]

Written with RJ Rao, his paper "Predictive coding in the visual cortex: a functional interpretation of some extra-classical receptive-field effects" helped spark the rise of predictive coding as an influential framework for thinking about the brain and vision.[6]

Ballard's textbook titled "An Introduction to Natural Computation" (1997) combines introductory material on varied subjects relevant to computing in the brain, such as neural networks, reinforcement learning, and genetic learning.[7] His last book, "Brain Computation as Hierarchical Abstraction," describes a multilevel approach to understanding neural computation.[8]

References

edit
  1. ^ a b Personal Website
  2. ^ D.H. Ballard, C.M. Brown, Computer Vision, Prentice Hall, 1982
  3. ^ D.H. Ballard, "Generalizing the Hough Transform to Detect Arbitrary Shapes", Pattern Recognition, Vol.13, No.2, p.111-122, 1981
  4. ^ Ballard, D.H., "Animate vision," Artificial Intelligence 48, 57-86, 1991
  5. ^ Ballard, D. H. and Hayhoe, M. M.(2009) Modeling the role of task in the control of gaze, Visual Cognition, 17, 1185-1204
  6. ^ Rao, Rajesh P. N.; Ballard, Dana H. (January 1999). "Predictive coding in the visual cortex: a functional interpretation of some extra-classical receptive-field effects". Nature Neuroscience. 2 (1): 79–87. doi:10.1038/4580. PMID 10195184.
  7. ^ Ballard (1997). An Introduction to Natural Computation. Cambridge, Massachusetts: MIT Press.
  8. ^ Ballard (2015). Brain Computation as Hierarchical Abstraction. Cambridge, Massachusetts: MIT Press.

Further reading

edit