Patents by Inventor Mark Hannel

Mark Hannel 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: 20210364403
    Abstract: Systems and methods for uniquely identifying fluid-phase products by endowing them with fingerprints composed of dispersed colloidal particles, and by reading out those fingerprints on demand using Total Holographic Characterization. A library of chemically inert colloidal particles is developed that can be dispersed into soft materials, the stoichiometry of the mixture encoding user-specified information, including information about the host material. Encoded information then can be recovered by high-speed analysis of holographic microscopy images of the dispersed particles. Specifically, holograms of individual colloidal spheres are analyzed with predictions of the theory of light scattering to measure each sphere's radius and refractive index, thereby building up the distribution of particle properties one particle at a time. A complete analysis of a colloidal fingerprint requires several thousand single-particle holograms and can be completed in ten minutes.
    Type: Application
    Filed: August 9, 2021
    Publication date: November 25, 2021
    Applicant: NEW YORK UNIVERSITY
    Inventors: David G. Grier, David B. Ruffner, Aaron Yevick, Mark Hannel
  • Patent number: 11085864
    Abstract: Systems and methods for uniquely identifying fluid-phase products by endowing them with fingerprints composed of dispersed colloidal particles, and by reading out those fingerprints on demand using Total Holographic Characterization. A library of chemically inert colloidal particles is developed that can be dispersed into soft materials, the stoichiometry of the mixture encoding user-specified information, including information about the host material. Encoded information then can be recovered by high-speed analysis of holographic microscopy images of the dispersed particles. Specifically, holograms of individual colloidal spheres are analyzed with predictions of the theory of light scattering to measure each sphere's radius and refractive index, thereby building up the distribution of particle properties one particle at a time. A complete analysis of a colloidal fingerprint requires several thousand single-particle holograms and can be completed in ten minutes.
    Type: Grant
    Filed: November 11, 2015
    Date of Patent: August 10, 2021
    Assignee: NEW YORK UNIVERSITY
    Inventors: David G. Grier, David B. Ruffner, Aaron Yevick, Mark Hannel
  • Patent number: 10983041
    Abstract: A method and system for identification of holographic tracking and identification of features of an object. A holograph is created from scattering off the object, intensity gradients are established for a plurality of pixels in the holograms, the direction of the intensity gradient is determined and those directions analyzed to identify features of the object and enables tracking of the object. Machine learning devices can be trained to estimate particle properties from holographic information.
    Type: Grant
    Filed: February 12, 2015
    Date of Patent: April 20, 2021
    Assignee: NEW YORK UNIVERSITY
    Inventors: Aaron Yevick, Mark Hannel, David G. Grier, Bhaskar Jyoti Krishnatreya
  • Patent number: 10656065
    Abstract: Systems and methods for uniquely identifying fluid-phase products by endowing them with fingerprints composed of dispersed colloidal particles, and by reading out those fingerprints on demand using Total Holographic Characterization. A library of chemically inert colloidal particles is developed that can be dispersed into soft materials, the stoichiometry of the mixture encoding user-specified information, including information about the host material. Encoded information then can be recovered by high-speed analysis of holographic microscopy images of the dispersed particles. Specifically, holograms of individual colloidal spheres are analyzed with predictions of the theory of light scattering to measure each sphere's radius and refractive index, thereby building up the distribution of particle properties one particle at a time. A complete analysis of a colloidal fingerprint requires several thousand single-particle holograms and can be completed in ten minutes.
    Type: Grant
    Filed: November 11, 2015
    Date of Patent: May 19, 2020
    Assignee: NEW YORK UNIVERSITY
    Inventors: David G. Grier, David B. Ruffner, Aaron Yevick, Mark Hannel
  • Patent number: 10222315
    Abstract: Holograms of colloidal dispersions encode comprehensive information about individual particles' three-dimensional positions, sizes and optical properties. Extracting that information typically is computation-ally intensive, and thus slow. Machine-learning techniques based on support vector machines (SVMs) can analyze holographic video microscopy data in real time on low-power computers. The resulting stream of precise particle-resolved tracking and characterization data provides unparalleled insights into the composition and dynamics of colloidal dispersions and enables applications ranging from basic research to process control and quality assurance.
    Type: Grant
    Filed: October 12, 2015
    Date of Patent: March 5, 2019
    Assignee: NEW YORK UNIVERSITY
    Inventors: David G. Grier, Aaron Yevick, Mark Hannel
  • Publication number: 20170307497
    Abstract: Systems and methods for uniquely identifying fluid-phase products by endowing them with fingerprints composed of dispersed colloidal particles, and by reading out those fingerprints on demand using Total Holographic Characterization. A library of chemically inert colloidal particles is developed that can be dispersed into soft materials, the stoichiometry of the mixture encoding user-specified information, including information about the host material. Encoded information then can be recovered by high-speed analysis of holographic microscopy images of the dispersed particles. Specifically, holograms of individual colloidal spheres are analyzed with predictions of the theory of light scattering to measure each sphere's radius and refractive index, thereby building up the distribution of particle properties one particle at a time. A complete analysis of a colloidal fingerprint requires several thousand single-particle holograms and can be completed in ten minutes.
    Type: Application
    Filed: November 11, 2015
    Publication date: October 26, 2017
    Inventors: David G. GRIER, David B. RUFFNER, Aaron YEVICK, Mark HANNEL
  • Publication number: 20170241891
    Abstract: Holograms of colloidal dispersions encode comprehensive information about individual particles' three-dimensional positions, sizes and optical properties. Extracting that information typically is computation-ally intensive, and thus slow. Machine-learning techniques based on support vector machines (SVMs) can analyze holographic video microscopy data in real time on low-power computers. The resulting stream of precise particle-resolved tracking and characterization data provides unparalleled insights into the composition and dynamics of colloidal dispersions and enables applications ranging from basic research to process control and quality assurance.
    Type: Application
    Filed: October 12, 2015
    Publication date: August 24, 2017
    Inventors: David G. GRIER, Aaron YEVICK, Mark HANNEL
  • Publication number: 20170059468
    Abstract: A method and system for identification of holographic tracking and identification of features of an object. A holograph is created from scattering off the object, intensity gradients are established for a plurality of pixels in the holograms, the direction of the intensity gradient is determined and those directions analyzed to identify features of the object and enables tracking of the object. Machine learning devices can be trained to estimate particle properties from holographic information.
    Type: Application
    Filed: February 12, 2015
    Publication date: March 2, 2017
    Applicant: New York University
    Inventors: Aaron Yevick, Mark Hannel, David G. Grier, Bhaskar Jyoti Krishnatreya