Patents by Inventor Khan Mohammed SIDDIQUI

Khan Mohammed SIDDIQUI has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 8867802
    Abstract: Automatic organ localization is described. In an example, an organ in a medical image is localized using one or more trained regression trees. Each image element of the medical image is applied to the trained regression trees to compute probability distributions that relate to a distance from each image element to the organ. At least a subset of the probability distributions are selected and aggregated to calculate a localization estimate for the organ. In another example, the regression trees are trained using training images having a predefined organ location. At each node of the tree, test parameters are generated that determine which subsequent node each training image element is passed to. This is repeated until each image element reaches a leaf node of the tree. A probability distribution is generated and stored at each leaf node, based on the distance from the leaf node's image elements to the organ.
    Type: Grant
    Filed: April 19, 2011
    Date of Patent: October 21, 2014
    Assignee: Microsoft Corporation
    Inventors: Antonio Criminisi, Jamie Daniel Joseph Shotton, Duncan Paul Robertson, Sayan D. Pathak, Steven James White, Khan Mohammed Siddiqui
  • Publication number: 20120269407
    Abstract: Automatic organ localization is described. In an example, an organ in a medical image is localized using one or more trained regression trees. Each image element of the medical image is applied to the trained regression trees to compute probability distributions that relate to a distance from each image element to the organ. At least a subset of the probability distributions are selected and aggregated to calculate a localization estimate for the organ. In another example, the regression trees are trained using training images having a predefined organ location. At each node of the tree, test parameters are generated that determine which subsequent node each training image element is passed to. This is repeated until each image element reaches a leaf node of the tree. A probability distribution is generated and stored at each leaf node, based on the distance from the leaf node's image elements to the organ.
    Type: Application
    Filed: April 19, 2011
    Publication date: October 25, 2012
    Applicant: MICROSOFT CORPORATION
    Inventors: Antonio CRIMINISI, Jamie Daniel Joseph SHOTTON, Duncan Paul ROBERTSON, Sayan D. PATHAK, Steven James WHITE, Khan Mohammed SIDDIQUI