Patents by Inventor Felix de Chaumont Quitry

Felix de Chaumont Quitry 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: 20230377561
    Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing audio inputs using a learned audio frontend machine learning model that processes the audio input to generate a representation of the audio input. The representation can then be processed by an audio understanding model to generate a respective output for each of one or more audio understanding tasks.
    Type: Application
    Filed: October 4, 2021
    Publication date: November 23, 2023
    Inventors: Neil Zeghidour, Olivier Teboul, Félix de Chaumont Quitry, Marco Tagliasacchi
  • Publication number: 20230085596
    Abstract: Systems and methods for training a machine-learned model are provided. A method can include can include obtaining an unlabeled audio signal, sampling the unlabeled audio signal to select one or more sampled slices, inputting the one or more sampled slices into a machine-learned model, receiving, as an output of the machine-learned model, one or more determined characteristics associated with the audio signal, determining a loss function for the machine-learned model based at least in part on a difference between the one or more determined characteristics and one or more corresponding ground truth characteristics of the audio signal, and training the machine-learned model from end to end based at least in part on the loss function. The one or more determined characteristics can include one or more reconstructed portions of the audio signal temporally adjacent to the one or more sampled slices or an estimated distance between two sampled slices.
    Type: Application
    Filed: November 14, 2022
    Publication date: March 16, 2023
    Inventors: Beat Gfeller, Dominik Roblek, Félix de Chaumont Quitry, Marco Tagliasacchi
  • Publication number: 20230013370
    Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for processing an input audio waveform using a generator neural network to generate an output audio waveform. In one aspect, a method comprises: receiving an input audio waveform; processing the input audio waveform using an encoder neural network to generate a set of feature vectors representing the input audio waveform; and processing the set of feature vectors representing the input audio waveform using a decoder neural network to generate an output audio waveform that comprises a respective output audio sample for each of a plurality of output time steps.
    Type: Application
    Filed: July 1, 2022
    Publication date: January 19, 2023
    Inventors: Yunpeng Li, Marco Tagliasacchi, Dominik Roblek, Félix de Chaumont Quitry, Beat Gfeller, Hannah Raphaelle Muckenhirn, Victor Ungureanu, Oleg Rybakov, Karolis Misiunas, Zalán Borsos
  • Publication number: 20220383112
    Abstract: A system including a multi-task adapter neural network for performing multiple machine learning tasks is described. The adapter neural network is configured to receive a shared input for the machine learning tasks, and process the shared input to generate, for each of the machine learning tasks, a respective predicted output. The adapter neural network includes (i) a shared encoder configured to receive the shared input and to process the shared input to extract shared feature representations for the machine learning tasks, and (ii) multiple task-adapter encoders, each of the task-adapter encoders being associated with a respective machine learning task in the machine learning tasks and configured to: receive the shared input, receive the shared feature representations from the shared encoder, and process the shared input and the shared feature representations to generate the respective predicted output for the respective machine learning task.
    Type: Application
    Filed: September 23, 2020
    Publication date: December 1, 2022
    Inventors: Marco Tagliasacchi, Félix de Chaumont Quitry, Dominik Roblek
  • Patent number: 11501787
    Abstract: Systems and methods for training a machine-learned model are provided. A method can include can include obtaining an unlabeled audio signal, sampling the unlabeled audio signal to select one or more sampled slices, inputting the one or more sampled slices into a machine-learned model, receiving, as an output of the machine-learned model, one or more determined characteristics associated with the audio signal, determining a loss function for the machine-learned model based at least in part on a difference between the one or more determined characteristics and one or more corresponding ground truth characteristics of the audio signal, and training the machine-learned model from end to end based at least in part on the loss function. The one or more determined characteristics can include one or more reconstructed portions of the audio signal temporally adjacent to the one or more sampled slices or an estimated distance between two sampled slices.
    Type: Grant
    Filed: August 22, 2019
    Date of Patent: November 15, 2022
    Assignee: GOOGLE LLC
    Inventors: Beat Gfeller, Dominik Roblek, Félix de Chaumont Quitry, Marco Tagliasacchi
  • Publication number: 20220059117
    Abstract: Examples relate to on-device non-semantic representation fine-tuning for speech classification. A computing system may obtain audio data having a speech portion and train a neural network to learn a non-semantic speech representation based on the speech portion of the audio data. The computing system may evaluate performance of the non-semantic speech representation based on a set of benchmark tasks corresponding to a speech domain and perform a fine-tuning process on the non-semantic speech representation based on one or more downstream tasks. The computing system may further generate a model based on the non-semantic representation and provide the model to a mobile computing device. The model is configured to operate locally on the mobile computing device.
    Type: Application
    Filed: August 24, 2020
    Publication date: February 24, 2022
    Inventors: Joel Shor, Ronnie Maor, Oran Lang, Omry Tuval, Marco Tagliasacchi, Ira Shavitt, Felix de Chaumont Quitry, Dotan Emanuel, Aren Jansen
  • Publication number: 20210056980
    Abstract: Systems and methods for training a machine-learned model are provided. A method can include can include obtaining an unlabeled audio signal, sampling the unlabeled audio signal to select one or more sampled slices, inputting the one or more sampled slices into a machine-learned model, receiving, as an output of the machine-learned model, one or more determined characteristics associated with the audio signal, determining a loss function for the machine-learned model based at least in part on a difference between the one or more determined characteristics and one or more corresponding ground truth characteristics of the audio signal, and training the machine-learned model from end to end based at least in part on the loss function. The one or more determined characteristics can include one or more reconstructed portions of the audio signal temporally adjacent to the one or more sampled slices or an estimated distance between two sampled slices.
    Type: Application
    Filed: August 22, 2019
    Publication date: February 25, 2021
    Inventors: Beat Gfeller, Dominik Roblek, Félix de Chaumont Quitry, Marco Tagliasacchi