Patents by Inventor Matthias R. Hohmann

Matthias R. Hohmann 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: 20240099627
    Abstract: Aspects of the subject technology provide improved techniques for estimating muscular force. The improved techniques may include single-channel or multiple-channel surface electromyography (EMG), such as via a measurement device worn on a wrist. A muscular force estimate may be based on one or more measurements of variation between adjacent voltage measurements and estimates of spectral properties of the voltage measurements. The resulting muscular force estimate may for a basis for improved hand gesture recognition and/or heath metrics of the user.
    Type: Application
    Filed: September 18, 2023
    Publication date: March 28, 2024
    Inventors: Matthias R. HOHMANN, Ellen L. ZIPPI, Kaan E. DOGRUSOZ
  • Publication number: 20240103632
    Abstract: Aspects of the subject technology relate to providing gesture-based control of electronic devices. Providing gesture-based control may include determining, with a machine learning system that includes multiple machine learning models, a prediction of one or more gestures and their corresponding probabilities of being performed. A likelihood of the user's intent to actually perform that gesture may then be generated, based on the prediction and a gesture detection factor. The likelihood may be dynamically updated over time, and a visual, auditory, and/or haptic indicator of the likelihood may be provided as user feedback. The visual, auditory, and/or haptic indicator may be helpful to guide the user to the correct gesture if the gesture is intended, or to stop performing an action similar to the gesture if the gesture is not intended.
    Type: Application
    Filed: September 18, 2023
    Publication date: March 28, 2024
    Inventors: Matthias R. HOHMANN, Anna SEDLACKOVA, Bradley W. GRIFFIN, Christopher M. SANDINO, Darius A. SATONGAR, Erdrin AZEMI, Kaan E. DOGRUSOZ, Paul G. PUSKARICH, Gergo PALKOVICS
  • Publication number: 20240058650
    Abstract: Methods, systems and/or computer-implemented instructions are configured to perform or support actions that include: determining a time contribution for each of a set of workout effort zones for a user, wherein each of the set of workout effort zones corresponds to a range of values for a biosignal; determining a timeseries of workout target effort zones for the user based on the target time contributions for the set of workout effort zones; receiving, during a workout time period, real-time biosignal data from a sensor in a wearable electronic device being worn by the user; generating, during the workout time period, an audio, visual, or haptic stimulus based on the real-time biosignal data and a target effort zone in the time series of workout target effort zones; and outputting, during the workout time period, the audio, visual, or haptic stimulus.
    Type: Application
    Filed: August 17, 2023
    Publication date: February 22, 2024
    Applicant: Apple Inc.
    Inventors: Matthias R. Hohmann, Andrea Eppy, Erdrin Azemi
  • Publication number: 20230342583
    Abstract: A method is provided that includes receiving biosignal data measured from a user, encoding the biosignal data into a vector, and generating, using a generative model, an image based on the vector. The generated image is provided for display.
    Type: Application
    Filed: December 13, 2022
    Publication date: October 26, 2023
    Inventors: Joseph Y. CHENG, Bradley W. GRIFFIN, Hanlin GOH, Helen Y. WENG, Matthias R. HOHMANN
  • Publication number: 20220383189
    Abstract: Methods and systems are provided for predicting cognitive load. A computing device receives sensor measurements from sensors. The sensor measurements correspond to characteristics of a user during the performance of a task. For each sensor, the computing device derives, from the sensor measurements of the sensor, a set of features predictive of the cognitive load of the user; generates, from those features, a self-attention vector that characterizes each feature of the set of features relative to another feature; and defines a feature vector from the features and the self-attention vector. The computing device generates an input feature vector from the feature vector of at least one sensor. The computing device then uses a machine-learning model to generate an indication of the cognitive load of the user during the performance of a task from the feature vector.
    Type: Application
    Filed: December 17, 2021
    Publication date: December 1, 2022
    Applicant: Apple Inc.
    Inventors: Joseph Yitan Cheng, Amruta Pai, Erdrin Azemi, Matthias R. Hohmann