Patents by Inventor Ties Jehan VAN ROZENDAAL

Ties Jehan VAN ROZENDAAL 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).

  • Patent number: 11924445
    Abstract: Techniques are described for compressing data using machine learning systems and tuning machine learning systems for compressing the data. An example process can include receiving, by a neural network compression system (e.g., trained on a training dataset), input data for compression by the neural network compression system. The process can include determining a set of updates for the neural network compression system, the set of updates including updated model parameters tuned using the input data. The process can include generating, by the neural network compression system using a latent prior, a first bitstream including a compressed version of the input data. The process can further include generating, by the neural network compression system using the latent prior and a model prior, a second bitstream including a compressed version of the updated model parameters. The process can include outputting the first bitstream and the second bitstream for transmission to a receiver.
    Type: Grant
    Filed: March 15, 2021
    Date of Patent: March 5, 2024
    Assignee: QUALCOMM INCORPORATED
    Inventors: Ties Jehan Van Rozendaal, Iris Anne Marie Huijben, Taco Sebastiaan Cohen
  • Publication number: 20230336754
    Abstract: Certain aspects of the present disclosure are directed to methods and apparatus for compressing video content using deep generative models. One example method generally includes receiving video content for compression. The received video content is generally encoded into a latent code space through an encoder, which may be implemented by a first artificial neural network. A compressed version of the encoded video content is generally generated through a trained probabilistic model, which may be implemented by a second artificial neural network, and output for transmission.
    Type: Application
    Filed: June 19, 2023
    Publication date: October 19, 2023
    Inventors: Amirhossein HABIBIAN, Ties Jehan VAN ROZENDAAL, Taco Sebastiaan COHEN
  • Patent number: 11729406
    Abstract: Certain aspects of the present disclosure are directed to methods and apparatus for compressing video content using deep generative models. One example method generally includes receiving video content for compression. The received video content is generally encoded into a latent code space through an encoder, which may be implemented by a first artificial neural network. A compressed version of the encoded video content is generally generated through a trained probabilistic model, which may be implemented by a second artificial neural network, and output for transmission.
    Type: Grant
    Filed: March 21, 2020
    Date of Patent: August 15, 2023
    Assignee: QUALCOMM INCORPORATED
    Inventors: Amirhossein Habibian, Ties Jehan Van Rozendaal, Taco Sebastiaan Cohen
  • Publication number: 20230074979
    Abstract: Techniques are described for compressing data using machine learning systems. An example process can include receiving input data for compression by a neural network compression system. The process can include determining, based on the input data, a set of updated model parameters for the neural network compression system, wherein the set of updated model parameters is selected from a subspace of model parameters. The process can include generating at least one bitstream including a compressed version of the input data and a compressed version of one or more subspace coordinates that correspond to the set of updated model parameters. The process can include outputting the at least one bitstream for transmission to a receiver.
    Type: Application
    Filed: August 25, 2021
    Publication date: March 9, 2023
    Inventors: Johann Hinrich BREHMER, Ties Jehan VAN ROZENDAAL, Yunfan ZHANG, Taco Sebastiaan COHEN
  • Publication number: 20220385907
    Abstract: Techniques are described for compressing and decompressing data using machine learning systems. An example process can include receiving a plurality of images for compression by a neural network compression system. The process can include determining, based on a first image from the plurality of images, a first plurality of weight values associated with a first model of the neural network compression system. The process can include generating a first bitstream comprising a compressed version of the first plurality of weight values. The process can include outputting the first bitstream for transmission to a receiver.
    Type: Application
    Filed: December 17, 2021
    Publication date: December 1, 2022
    Inventors: Yunfan ZHANG, Ties Jehan VAN ROZENDAAL, Taco Sebastiaan COHEN, Markus NAGEL, Johann Hinrich BREHMER
  • Patent number: 11405626
    Abstract: Techniques are described herein for coding video content using recurrent-based machine learning tools. A device can include a neural network system including encoder and decoder portions. The encoder portion can generate output data for the current time step of operation of the neural network system based on an input video frame for a current time step of operation of the neural network system, reconstructed motion estimation data from a previous time step of operation, reconstructed residual data from the previous time step of operation, and recurrent state data from at least one recurrent layer of a decoder portion of the neural network system from the previous time step of operation. A decoder portion of the neural network system can generate, based on the output data and recurrent state data from the previous time step of operation, a reconstructed video frame for the current time step of operation.
    Type: Grant
    Filed: November 6, 2020
    Date of Patent: August 2, 2022
    Assignee: QUALCOMM Incorporated
    Inventors: Adam Waldemar Golinski, Yang Yang, Reza Pourreza, Guillaume Konrad Sautiere, Ties Jehan Van Rozendaal, Taco Sebastiaan Cohen
  • Publication number: 20220103839
    Abstract: Techniques are described for compressing data using machine learning systems and tuning machine learning systems for compressing the data. An example process can include receiving, by a neural network compression system (e.g., trained on a training dataset), input data for compression by the neural network compression system. The process can include determining a set of updates for the neural network compression system, the set of updates including updated model parameters tuned using the input data. The process can include generating, by the neural network compression system using a latent prior, a first bitstream including a compressed version of the input data. The process can further include generating, by the neural network compression system using the latent prior and a model prior, a second bitstream including a compressed version of the updated model parameters. The process can include outputting the first bitstream and the second bitstream for transmission to a receiver.
    Type: Application
    Filed: March 15, 2021
    Publication date: March 31, 2022
    Inventors: Ties Jehan VAN ROZENDAAL, Iris Ann Marie HUIJBEN, Taco Sebastiaan COHEN
  • Publication number: 20210281867
    Abstract: Techniques are described herein for coding video content using recurrent-based machine learning tools. A device can include a neural network system including encoder and decoder portions. The encoder portion can generate output data for the current time step of operation of the neural network system based on an input video frame for a current time step of operation of the neural network system, reconstructed motion estimation data from a previous time step of operation, reconstructed residual data from the previous time step of operation, and recurrent state data from at least one recurrent layer of a decoder portion of the neural network system from the previous time step of operation. A decoder portion of the neural network system can generate, based on the output data and recurrent state data from the previous time step of operation, a reconstructed video frame for the current time step of operation.
    Type: Application
    Filed: November 6, 2020
    Publication date: September 9, 2021
    Inventors: Adam Waldemar GOLINSKI, Yang YANG, Reza POURREZA, Guillaume Konrad SAUTIERE, Ties Jehan VAN ROZENDAAL, Taco Sebastiaan COHEN
  • Publication number: 20200304802
    Abstract: Certain aspects of the present disclosure are directed to methods and apparatus for compressing video content using deep generative models. One example method generally includes receiving video content for compression. The received video content is generally encoded into a latent code space through an encoder, which may be implemented by a first artificial neural network. A compressed version of the encoded video content is generally generated through a trained probabilistic model, which may be implemented by a second artificial neural network, and output for transmission.
    Type: Application
    Filed: March 21, 2020
    Publication date: September 24, 2020
    Inventors: Amirhossein HABIBIAN, Ties Jehan VAN ROZENDAAL, Taco Sebastiaan COHEN