Patents by Inventor Leon Y. DEOUELL

Leon Y. DEOUELL 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).

  • Publication number: 20230371872
    Abstract: A method of estimating attention comprises: receiving encephalogram (EG) data corresponding to signals collected from a brain of a subject synchronously with stimuli applied to the subject. The EG data are segmented into segments, each corresponding to a single stimulus. The method also comprises dividing each segment of the EG data into a first time-window having a fixed beginning relative to a respective stimulus, and a second time-window having a varying beginning relative to the respective stimulus. The method also comprises processing the time-windows to determine the likelihood for a given segment to describe an attentive state of the brain.
    Type: Application
    Filed: August 25, 2021
    Publication date: November 23, 2023
    Applicant: InnerEye Ltd.
    Inventors: Yuval HARPAZ, Amir B. GEVA, Leon Y. DEOUELL, Sergey VAISMAN, Yaar SHALOM, Michael OTSUP, Yonatan MEIR
  • Publication number: 20230185377
    Abstract: A method of training an image classification neural network comprises: presenting a first plurality of images to an observer as a visual stimulus, while collecting neurophysiological signals from a brain of the observer; processing the neurophysiological signals to identify a neurophysiological event indicative of a detection of a target by the observer in at least one image of the first plurality of images; training the image classification neural network to identify the target in the image, based on the identification of the neurophysiological event; and storing the trained image classification neural network in a computer-readable storage medium.
    Type: Application
    Filed: February 8, 2023
    Publication date: June 15, 2023
    Applicant: InnerEye Ltd.
    Inventors: Amir B. GEVA, Eitan NETZER, Ran El MANOR, Sergey VAISMAN, Leon Y. DEOUELL, Uri ANTMAN
  • Patent number: 11580409
    Abstract: A method of training an image classification neural network comprises: presenting a first plurality of images to an observer as a visual stimulus, while collecting neurophysiological signals from a brain of the observer; processing the neurophysiological signals to identify a neurophysiological event indicative of a detection of a target by the observer in at least one image of the first plurality of images; training the image classification neural network to identify the target in the image, based on the identification of the neurophysiological event; and storing the trained image classification neural network in a computer-readable storage medium.
    Type: Grant
    Filed: December 21, 2017
    Date of Patent: February 14, 2023
    Assignee: InnerEye Ltd.
    Inventors: Amir B. Geva, Eitan Netzer, Ran El Manor, Sergey Vaisman, Leon Y. Deouell, Uri Antman
  • Patent number: 10948990
    Abstract: A method of classifying an image is disclosed. The method comprises: applying a computer vision procedure to the image to detect therein candidate image regions suspected as being occupied by a target; presenting to an observer each candidate image region as a visual stimulus, while collecting neurophysiological signals from a brain of the observer; processing the neurophysiological signals to identify a neurophysiological event indicative of a detection of the target by the observer; and determining an existence of the target in the image is based, at least in part, on the identification of the neurophysiological event.
    Type: Grant
    Filed: May 16, 2019
    Date of Patent: March 16, 2021
    Assignee: InnerEye Ltd.
    Inventors: Amir B. Geva, Leon Y. Deouell, Sergey Vaisman, Omri Harish, Ran El Manor, Eitan Netzer, Shani Shalgi
  • Patent number: 10694968
    Abstract: Systems and method for classifying EEG signals of a human subject generated responsive to a series of images containing target images and non-target images. The EEG signals are in a spatio-temporal representation. The time points are classified independently, using a linear discriminant classifier, to compute spatio-temporal discriminating weights that are used to amplify the spatio-temporal representation, to create a spatially-weighted representation. Principal Component Analysis is used on a temporal domain for dimensionality reduction, separately for each spatial channel of the signals, to create a projection, which is applied to the spatially-weighted representation onto a first plurality of principal components, to create a temporally approximated spatially weighted representation.
    Type: Grant
    Filed: April 13, 2014
    Date of Patent: June 30, 2020
    Assignees: Yissum Research Development Company of the Hebrew University of Jerusalem Ltd., B.G. Negev Technologies & Applications Ltd., at Ben-Gurion University
    Inventors: Leon Y. Deouell, Amir B. Geva, Galit Fuhrmann Alpert, Ran El Manor, Shani Shalgi
  • Publication number: 20200193299
    Abstract: A method of training an image classification neural network comprises: presenting a first plurality of images to an observer as a visual stimulus, while collecting neurophysiological signals from a brain of the observer; processing the neurophysiological signals to identify a neurophysiological event indicative of a detection of a target by the observer in at least one image of the first plurality of images; training the image classification neural network to identify the target in the image, based on the identification of the neurophysiological event; and storing the trained image classification neural network in a computer-readable storage medium.
    Type: Application
    Filed: December 21, 2017
    Publication date: June 18, 2020
    Applicant: InnerEye Ltd.
    Inventors: Amir B. GEVA, Eltan NETZER, Ran El MANOR, Sergey VAISMAN, Leon Y. DEOUELL, Uri ANTMAN
  • Publication number: 20190294915
    Abstract: A method of classifying an image is disclosed. The method comprises: applying a computer vision procedure to the image to detect therein candidate image regions suspected as being occupied by a target; presenting to an observer each candidate image region as a visual stimulus, while collecting neurophysiological signals from a brain of the observer; processing the neurophysiological signals to identify a neurophysiological event indicative of a detection of the target by the observer; and determining an existence of the target in the image is based, at least in part, on the identification of the neurophysiological event.
    Type: Application
    Filed: May 16, 2019
    Publication date: September 26, 2019
    Applicant: InnerEye Ltd.
    Inventors: Amir B. GEVA, Leon Y. DEOUELL, Sergey VAISMAN, Omri HARISH, Ran EI MANOR, Eitan NETZER, Shani SHALGI
  • Patent number: 10303971
    Abstract: A method of classifying an image is disclosed. The method comprises: applying a computer vision procedure to the image to detect therein candidate image regions suspected as being occupied by a target; presenting to an observer each candidate image region as a visual stimulus, while collecting neurophysiological signals from a brain of the observer; processing the neurophysiological signals to identify a neurophysiological event indicative of a detection of the target by the observer; and determining an existence of the target in the image is based, at least in part, on the identification of the neurophysiological event.
    Type: Grant
    Filed: June 2, 2016
    Date of Patent: May 28, 2019
    Assignee: InnerEye Ltd.
    Inventors: Amir B. Geva, Leon Y. Deouell, Sergey Vaisman, Omri Harish, Ran El Manor, Eitan Netzer, Shani Shalgi
  • Publication number: 20180089531
    Abstract: A method of classifying an image is disclosed. The method comprises: applying a computer vision procedure to the image to detect therein candidate image regions suspected as being occupied by a target; presenting to an observer each candidate image region as a visual stimulus, while collecting neurophysiological signals from a brain of the observer; processing the neurophysiological signals to identify a neurophysiological event indicative of a detection of the target by the observer; and determining an existence of the target in the image is based, at least in part, on the identification of the neurophysiological event.
    Type: Application
    Filed: June 2, 2016
    Publication date: March 29, 2018
    Inventors: Amir B. GEVA, Leon Y. DEOUELL, Sergey VAISMAN, Omri HARISH, Ran EI MANOR, Eitan NETZER, Shani SHALGI
  • Publication number: 20160051163
    Abstract: Systems and method for classifying EEG signals of a human subject generated responsive to a series of images containing target images and non-target images. The EEG signals are in a spatio-temporal representation. The time points are classified independently, using a linear discriminant classifier, to compute spatio-temporal discriminating weights that are used to amplify the spatio-temporal representation, to create a spatially-weighted representation. Principal Component Analysis is used on a temporal domain for dimensionality reduction, separately for each spatial channel of the signals, to create a projection, which is applied to the spatially-weighted representation onto a first plurality of principal components, to create a temporally approximated spatially weighted representation.
    Type: Application
    Filed: April 13, 2014
    Publication date: February 25, 2016
    Inventors: Leon Y. DEOUELL, Amir B. GEVA, Galit FUHRMANN ALPERT, Ran El MANOR, Shani SHALGI