Patents by Inventor Julien Despois

Julien Despois 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: 11908128
    Abstract: Systems and methods process images to determine a skin condition severity analysis and to visualize a skin analysis such as using a deep neural network (e.g. a convolutional neural network) where a problem was formulated as a regression task with integer-only labels. Auxiliary classification tasks (for example, comprising gender and ethnicity predictions) are introduced to improve performance. Scoring and other image processing techniques may be used (e.g. in assoc. with the model) to visualize results such as highlighting the analyzed image. It is demonstrated that the visualization of results, which highlight skin condition affected areas, can also provide perspicuous explanations for the model. A plurality (k) of data augmentations may be made to a source image to yield k augmented images for processing. Activation masks (e.g. heatmaps) produced from processing the k augmented images are used to define a final map to visualize the skin analysis.
    Type: Grant
    Filed: August 18, 2020
    Date of Patent: February 20, 2024
    Assignee: L'Oreal
    Inventors: Ruowei Jiang, Irina Kezele, Zhi Yu, Sophie Seite, Frederic Antoinin Raymond Serge Flament, Parham Aarabi, Mathieu Perrot, Julien Despois
  • Patent number: 11832958
    Abstract: There is shown and described a deep learning based system and method for skin diagnostics as well as testing metrics that show that such a deep learning based system outperforms human experts on the task of apparent skin diagnostics. Also shown and described is a system and method of monitoring a skin treatment regime using a deep learning based system and method for skin diagnostics.
    Type: Grant
    Filed: December 13, 2022
    Date of Patent: December 5, 2023
    Assignee: L'OREAL
    Inventors: Ruowei Jiang, Junwei Ma, He Ma, Eric Elmoznino, Irina Kezele, Alex Levinshtein, Julien Despois, Matthieu Perrot, Frederic Antoinin Raymond Serge Flament, Parham Aarabi
  • Publication number: 20230123037
    Abstract: There is shown and described a deep learning based system and method for skin diagnostics as well as testing metrics that show that such a deep learning based system outperforms human experts on the task of apparent skin diagnostics. Also shown and described is a system and method of monitoring a skin treatment regime using a deep learning based system and method for skin diagnostics.
    Type: Application
    Filed: December 13, 2022
    Publication date: April 20, 2023
    Applicant: L'OREAL
    Inventors: Ruowei JIANG, Junwei MA, He MA, Eric ELMOZNINO, Irina KEZELE, Alex LEVINSHTEIN, Julien DESPOIS, Matthieu PERROT, Frederic Antoinin Raymond Serge FLAMENT, Parham AARABI
  • Patent number: 11553872
    Abstract: There is shown and described a deep learning based system and method for skin diagnostics as well as testing metrics that show that such a deep learning based system outperforms human experts on the task of apparent skin diagnostics. Also shown and described is a system and method of monitoring a skin treatment regime using a deep learning based system and method for skin diagnostics.
    Type: Grant
    Filed: December 4, 2019
    Date of Patent: January 17, 2023
    Assignee: L'OREAL
    Inventors: Ruowei Jiang, Junwei Ma, He Ma, Eric Elmoznino, Irina Kezele, Alex Levinshtein, Julien Despois, Matthieu Perrot, Frederic Antoinin Raymond Serge Flament, Parham Aarabi
  • Publication number: 20210407153
    Abstract: There are provided computing devices and methods, etc. to controllably transform an image of a face, including a high resolution image, to simulate continuous aging. Ethnicity-specific aging information and weak spatial supervision are used to guide the aging process defined through training a model comprising a GANs based generator. Aging maps present the ethnicity-specific aging information as skin sign scores or apparent age values. The scores are located in the map in association with a respective location of the skin sign zone of the face associated with the skin sign. Patch-based training, particularly in association with location information to differentiate similar patches from different parts of the face, is used to train on high resolution images while minimize resource usage.
    Type: Application
    Filed: June 30, 2021
    Publication date: December 30, 2021
    Applicant: L'Oreal
    Inventors: Julien DESPOIS, Frederic FLAMENT, Matthieu PERROT
  • Publication number: 20200170564
    Abstract: There is shown and described a deep learning based system and method for skin diagnostics as well as testing metrics that show that such a deep learning based system outperforms human experts on the task of apparent skin diagnostics. Also shown and described is a system and method of monitoring a skin treatment regime using a deep learning based system and method for skin diagnostics.
    Type: Application
    Filed: December 4, 2019
    Publication date: June 4, 2020
    Inventors: Ruowei Jiang, Junwei Ma, He Ma, Eric Elmoznino, Irina Kezele, Alex Levinshtein, John Charbit, Julien Despois, Matthieu Perrot, Frederic Antoinin Raymond Serge Flament, Parham Aarabi