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Publications:

Journal Publications:

Brady, M. J., & Legge, G. E. (2006). Camera calibration for natural image studies and vision research. In Preparation.

Brady, MJ, & Kersten, D (2003). Bootstrapped learning of novel objects. Journal of Vision, 3(6), 413-422, http://journalofvision.org/3/6/2/, DOI 10.1167/3.6.2. (*.PDF)

Shams, L., Brady, M. J., & Schaal, S. K. (2001). Graph matching vs. mutual information maximization for object detection. Neural Networks, 14(3), 345-354. (*.PDF)

Brady, MJ (1990). Guaranteed learning algorithm for network with units having periodic threshold output function. Neural Computation, 2, 405-408.

Web Pages:

Brady, M. (1999). Growing Digital Embryos, from http://gandalf.psych.umn.edu/~kersten/kersten-lab/camouflage/degrowqt.html

Brady, M., & Kersten, D. (2000). The Camouflage Challenge, from http://gandalf.psych.umn.edu/~kersten/kersten-lab/camouflage/camouflageChallenge.html

Invited Talks:

Brady, M. J. (2005, April 7-9, 2005). Finding your bootstraps in the background. Paper presented at the Visual Learning and Brain Plasticity, Minneapolis, MN, USA.

Talks and Posters:

Brady, M. J. (1994). Learning algorithm for a piecewise linear neural network. Paper presented at the World Congress on Neural Networks.

Brady, M. J. (1998). Learning to recognize camouflaged novel objects. Paper presented at the IOVS, Fort Lauderdale, FL.

Brady, M. J. (1999). Psychophysical investigations of incomplete forms and forms with background. Unpublished Ph. D., University of Minnesota, Minneapolis.

Brady, M. J. (2005, April 7-9, 2005). Finding your bootstraps in the background. Paper presented at the Visual Learning and Brain Plasticity, Minneapolis, MN, USA.

Brady, M. J., Kersten, D., & Ziegenhagen, S. (2002). Learning to segment and recognize novel objects evolves in parallel. Paper presented at the Vision Sciences Society, 2nd Anual Meeting, Sarasota Florida.

Brady, M. J., & Kersten, D. J. (2000). Temporal asymmetries of illusory contour formation. Paper presented at the IOVS, Fort Lauderdale, FL.

Brady, M. J., Legge, G. E., & Kersten, D. (2004). Perturbation of object contours by natural background images. Paper presented at the Sensory Coding and the Natural Environment, Oxford, UK.

Brady, M. J., Ziegenhagen, S., & Kersten, D. (2002). Learning to recognize novel camouflaged objects. Paper presented at the Third Annual Computational Neuroscience Symposium: Visual Processing of Natural Images, Minneapolis, MN.

Patents:

US Patent 6,167,390: Facet classification neural network, December 26,2000. (more)

US Patent 5,892,838: Biometric recognition using a classification neural network, April 6,1999. (more)
                                                                                                       
US Patent 5,761,326: Method and apparatus for machine vision classification and tracking, June 2, 1998. (more)       
                                                                         
US Patent 5,684,898: Method and apparatus for background determination and subtraction for a monocular vision system,
November 4, 1997. (more)
                                                                                
US Patent 5,621,645: Automated lane definition for machine vision traffic detector, April 15, 1997. (more)

US Patent 5,619,616: Vehicle classification system using a passive audio input to a neural network, April 8, 1997. (more)

US Patent 5,473,931: Method and apparatus for calibrating three-dimensional space for machine vision applications, December, 12, 1995. (more)

US Patent 5,467,634: Method and apparatus for calibrating three-dimensional space for machine vision applications, November 21,1995. (more)

US Patent 5,434,927: Method and apparatus for machine vision classification and tracking, July 18, 1995. (more)

Thesis:

Brady, M. J. (1999). Psychophysical investigations of incomplete forms and forms with background.  University of Minnesota, Minneapolis.

 

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