Patents by Inventor Jonas Dorn

Jonas Dorn 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: 20220245227
    Abstract: The invention provides systems and methods for providing a user-specific activity model based on actigraphy data and for user verification based on a user-specific activity model based on actigraphy data.
    Type: Application
    Filed: June 16, 2020
    Publication date: August 4, 2022
    Inventors: Jonas DORN, Vittorio Paolo ILLIANO
  • Patent number: 10776423
    Abstract: Video processing for motor task analysis is described. In various examples, a video of a person carrying out a motor task, such as placing the forefinger on the nose, is input to a trained machine learning system to classify the motor task into one of a plurality of classes. In an example, motion descriptors such as optical flow are computed from pairs of frames of the video and the motion descriptors are input to the machine learning system. The motor task analysis may be used to assess or evaluate neurological conditions such as multiple sclerosis and/or Parkinson's.
    Type: Grant
    Filed: September 3, 2015
    Date of Patent: September 15, 2020
    Assignee: Novartis AG
    Inventors: Peter Kontschieder, Jonas Dorn, Darko Zikic, Antonio Criminsi, Frank Kurt Dahlke
  • Patent number: 10083233
    Abstract: Video processing for motor task analysis is described. In various examples, a video of at least part of a person or animal carrying out a motor task, such as placing the forefinger on the nose, is input to a trained machine learning system to classify the motor task into one of a plurality of classes. In an example, motion descriptors such as optical flow are computed from pairs of frames of the video and the motion descriptors are input to the machine learning system. For example, during training the machine learning system identifies time-dependent and/or location-dependent acceleration or velocity features which discriminate between the classes of the motor task. In examples, the trained machine learning system computes, from the motion descriptors, the location dependent acceleration or velocity features which it has learned as being good discriminators. In various examples, a feature is computed using sub-volumes of the video.
    Type: Grant
    Filed: November 9, 2014
    Date of Patent: September 25, 2018
    Assignee: Microsoft Technology Licensing, LLC
    Inventors: Peter Kontschieder, Jonas Dorn, Darko Zikic, Antonio Criminisi
  • Publication number: 20170293805
    Abstract: Video processing for motor task analysis is described. In various examples, a video of a person carrying out a motor task, such as placing the forefinger on the nose, is input to a trained machine learning system to classify the motor task into one of a plurality of classes. In an example, motion descriptors such as optical flow are computed from pairs of frames of the video and the motion descriptors are input to the machine learning system. The motor task analysis may be used to assess or evaluate neurological conditions such as multiple sclerosis and/or Parkinson's.
    Type: Application
    Filed: March 9, 2015
    Publication date: October 12, 2017
    Inventors: Peter Kontschieder, Jonas Dorn, Darko Zikic, Antonio Criminsi, Frank Kurt Dahlke
  • Publication number: 20160071284
    Abstract: Video processing for motor task analysis is described. In various examples, a video of at least part of a person or animal carrying out a motor task, such as placing the forefinger on the nose, is input to a trained machine learning system to classify the motor task into one of a plurality of classes. In an example, motion descriptors such as optical flow are computed from pairs of frames of the video and the motion descriptors are input to the machine learning system. For example, during training the machine learning system identifies time-dependent and/or location-dependent acceleration or velocity features which discriminate between the classes of the motor task. In examples, the trained machine learning system computes, from the motion descriptors, the location dependent acceleration or velocity features which it has learned as being good discriminators. In various examples, a feature is computed using sub-volumes of the video.
    Type: Application
    Filed: November 9, 2014
    Publication date: March 10, 2016
    Inventors: Peter Kontschieder, Jonas Dorn, Darko Zikic, Antonio Criminisi