Patents Assigned to Neuristics, Inc.
  • Patent number: 5274714
    Abstract: A pattern recognition method and apparatus utilizes a neural network to recognize input images which are sufficiently similar to a database of previously stored images. Images are first processed and subjected to a Fourier transform which yields a power spectrum. An in-class to out-of-class study is performed on a typical collection of images in order to determine the most discriminatory regions of the Fourier transform. A feature vector consisting of the (most discriminatory) information from the power spectrum of the Fourier transform of the image is formed. Feature vectors are input to a neural network having preferably two hidden layers, input dimensionality of the number of elements in the feature vector and output dimensionality of the number of data elements stored in the database. Unique identifier numbers are preferably stored along with the feature vector. Application of a query feature vector to the neural network results in an output vector.
    Type: Grant
    Filed: July 23, 1992
    Date of Patent: December 28, 1993
    Assignee: Neuristics, Inc.
    Inventors: Timothy L. Hutcheson, Wilson Or, Venkatesh Narayanan, Subramaniam Mohan, Peter G. Wohlmut, Ramanujam Srinivasan, Bobby R. Hunt, Thomas W. Ryan
  • Patent number: 5161204
    Abstract: A method and apparatus under software control for pattern recognition utilizes a neural network implementation to recognize two dimensional input images which are sufficiently similar to a database of previously stored two dimensional images. Images are first image processed and subjected to a Fourier transform which yields a power spectrum. An in-class to out-of-class study is performed on a typical collection of images in order to determine the most discriminatory regions of the Fourier transform. A feature vector consisting of the highest order (most discriminatory) magnitude information from the power spectrum of the Fourier transform of the image is formed. Feature vectors are input to a neural network having preferably two hidden layers, input dimensionality of the number of elements in the feature vector and output dimensionality of the number of data elements stored in the database. Unique identifier numbers are preferably stored along with the feature vector.
    Type: Grant
    Filed: June 4, 1990
    Date of Patent: November 3, 1992
    Assignee: Neuristics, Inc.
    Inventors: Timothy L. Hutcheson, Wilson Or, Venkatesh Narayanan, Subramaniam Mohan, Peter G. Wohlmut, Ramanujam Srinivasan, Bobby R. Hunt, Thomas W. Ryan