Patents by Inventor Jerzy ROZENBLIT

Jerzy ROZENBLIT 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: 20240257971
    Abstract: A virtual reality neuropsychological assessment (VRNA) system uses a deep learning network and a VR headset to administer multi-domain assessments of human cognitive performance. The deep learning network is trained to identify features in sensor data indicative of neuropsychological performance and classify users based on the features identified in the sensor data. The VR headset provides a user with a virtual simulation of an activity involving decision-making scenarios. During the virtual simulation, sensor data via a plurality of sensors of the VR headset is captured. The sensor data is applied to the deep learning network to identify features of the user and classify the user based on the features into a neuropsychological domains, such as attention, memory, processing speed, and executive function. Sensor data includes eye-tracking, hand-eye motor coordination, reaction time, working memory, learning and delayed memory, and inhibitory control.
    Type: Application
    Filed: February 1, 2024
    Publication date: August 1, 2024
    Inventors: William Killgore, Janet Roveda, Jerzy Rozenblit, Ao Li, Huayu Li
  • Patent number: 11868479
    Abstract: A security framework for life-critical and safety-critical devices, specifically medical devices, using: a) runtime, adaptive methods that dynamically assess the risk of newly discovered vulnerabilities and threats, and b) automatic mitigation methods that reduce system risk by seamlessly reconfiguring the device to operate within different execution modes. This technology automatically isolates threats by disabling affected system components. A multi-modal software design uses adaptive software in which operational modes have monotonically decreasing cumulative risk. Formal risk models are used to model the individual risk of accessing or controlling system components and to automatically calculate the cumulative risk of software modes. The automated detection of potential threats by the system or reporting of known vulnerabilities will dynamically change the system risk.
    Type: Grant
    Filed: November 1, 2019
    Date of Patent: January 9, 2024
    Assignees: ARIZONA BOARD OF REGENTS ON BEHALF OF THE UNIVERSITY OF ARIZONA, JOHANNES KEPLER UNIVERSITY LINZ
    Inventors: Roman Lysecky, Jerzy Rozenblit, Johannes Sametinger, Aakarsh Rao, Nadir Carreon
  • Publication number: 20220035927
    Abstract: A security framework for life-critical and safety-critical devices, specifically medical devices, using: a) runtime, adaptive methods that dynamically assess the risk of newly discovered vulnerabilities and threats, and b) automatic mitigation methods that reduce system risk by seamlessly reconfiguring the device to operate within different execution modes. This technology automatically isolates threats by disabling affected system components. A multi-modal software design uses adaptive software in which operational modes have monotonically decreasing cumulative risk. Formal risk models are used to model the individual risk of accessing or controlling system components and to automatically calculate the cumulative risk of software modes. The automated detection of potential threats by the system or reporting of known vulnerabilities will dynamically change the system risk.
    Type: Application
    Filed: November 1, 2019
    Publication date: February 3, 2022
    Inventors: Roman LYSECKY, Jerzy ROZENBLIT, Johannes SAMETINGER, Aakarsh RAO, Nadir CARREON