Patents by Inventor Romain Bregier
Romain Bregier 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).
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Publication number: 20240404104Abstract: A computer implemented method and system using an object-agnostic model for predicting a pose of an object in an image receives a query image having a target object therein; receives a set of reference images of the target object from different viewpoints; encodes, using a vision transformer, the received query image and the received set of reference images to generate a set of token features for the received query image and a set of token features for the received set of reference images; extracts, using a transformer decoder, information from the set of token features for the encoded reference images with respect to a set of token features for the received query image; processes, using a prediction head, the combined set of token features to generate a 2D-3D mapping and a confidence map of the query image; and processes the 2D-3D mapping and confidence map to determine the pose of the target object in the query image.Type: ApplicationFiled: April 25, 2024Publication date: December 5, 2024Applicant: Naver Labs CorporationInventors: Jérome Revaud, Romain Brégier, Yohann Cabon, Philippe Weinzaepfel, JongMin Lee
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Publication number: 20240144019Abstract: A training system includes: a model; and a training module configured to: construct a first pair of images of at least a first portion of a first human captured at different times; construct a second pair of images of at least a second portion of a second human captured at the same time from different points of view; input the first and second pairs of images to the model; the model configured to: generate first and second reconstructed images of the at least the first portion of the first human based on the first and second pairs, respectively, and the training module is configured to selectively adjust one or more parameters of the model based on: the first reconstructed image and the second reconstructed image.Type: ApplicationFiled: August 29, 2023Publication date: May 2, 2024Applicants: NAVER CORPORATION, NAVER LABS CORPORATIONInventors: Philippe WEINZAEPFEL, Vincent Leroy, Romain Brègier, Yohann Cabon, Thomas Lucas, Leonid Antsfield, Boris Chidlovskii, Gabriela Csurka Khedari, Jèrôme Revaud, Matthieu Armando, Fabien Baradel, Salma Galaaoui, Gregory Rogez
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Publication number: 20240135695Abstract: A method includes: performing unsupervised pre-training of a model, the model including and a decoder including: obtaining a first image and a second image under different conditions or from different viewpoints; encoding, by the encoder, the first image into a representation of the first image and the second image into a representation of the second image; transforming the representation of the first image into a transformed representation; decoding, by the decoder, the transformed representation into a reconstructed image, where the transforming of the representation of the first image and the decoding of the transformed representation is based on the representation of the first image and the representation of the second image; and adjusting one or more parameters of at least one of the encoder and the decoder based on minimizing a loss; and fine-tuning the model, initialized with a set of task specific encoder parameters, for a geometric vision task.Type: ApplicationFiled: August 4, 2023Publication date: April 25, 2024Applicants: NAVER CORPORATION, NAVER LABS CORPORATIONInventors: Romain BRÉGIER, Yohann CABON, Thomas LUCAS, Jérôme REVAUD, Philippe WEINZAEPFEL, Boris CHIDLOVSKII, Vincent LEROY, Leonid ANTSFELD, Gabriela CSURKA KHEDARI
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Publication number: 20240051125Abstract: A system includes: a hand module to, based on a demonstration of a human hand grasping an object, determine first and second vectors that are normal to and parallel to a palm of the human hand, respectively, and a position of the human hand; a gripper module to determine third and fourth vectors that are normal to and parallel to a palm of a gripper of a robot, respectively, and a present position of the gripper; and an actuation module to: move the gripper when open such that the present position of the gripper is at the position of the human hand, the third and first vectors are aligned, and the fourth and second vectors are aligned; close fingers of the gripper based on minimizing a first loss; and actuate the fingers of the gripper to minimize a second loss determined based on the first loss and a third loss.Type: ApplicationFiled: February 22, 2023Publication date: February 15, 2024Applicants: Naver Corporation, Naver Labs Corporation, Ecole Nationale des Ponts et ChausséesInventors: Yuming DU, Romain BREGIER, Philippe WEINZAEPFEL, Vincent LEPETIT
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Patent number: 11651608Abstract: A system for generating whole body poses includes: a body regression module configured to generate a first pose of a body of an animal in an input image by regressing from a stored body anchor pose; a face regression module configured to generate a second pose of a face of the animal in the input image by regressing from a stored face anchor pose; an extremity regression module configured to generate a third pose of an extremity of the animal in the input image by regressing from a stored extremity anchor pose; and a pose module configured to generate a whole body pose of the animal in the input image based on the first pose, the second pose, and the third pose.Type: GrantFiled: September 13, 2022Date of Patent: May 16, 2023Assignees: NAVER CORPORATION, NAVER LABS CORPORATIONInventors: Philippe Weinzaepfel, Romain Bregier, Hadrien Combaluzier, Vincent Leroy, Gregory Rogez
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Publication number: 20230119559Abstract: A training system includes: a neural network model configured to determine three-dimensional coordinates of joints, respectively, representing poses of animals in images, where the neural network model is trained using a first training dataset including: images including animals; and coordinates of joints of the animals in the images, respectively; and a training module configured to, after the training of the neural network model using the first training dataset, train the neural network model using a second training dataset including motion capture data, where the motion capture data does not include images of animals and includes measured coordinates at points, respectively, on animals.Type: ApplicationFiled: October 4, 2021Publication date: April 20, 2023Applicants: NAVER CORPORATION, NAVER LABS CORPORATIONInventors: Fabien BARADEL, Romain BREGIER, Thibault GROUEIX, Ioannis KALANTIDIS, Philippe WEINZAEPFEL, Gregory ROGEZ
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Publication number: 20230015984Abstract: A system for generating whole body poses includes: a body regression module configured to generate a first pose of a body of an animal in an input image by regressing from a stored body anchor pose; a face regression module configured to generate a second pose of a face of the animal in the input image by regressing from a stored face anchor pose; an extremity regression module configured to generate a third pose of an extremity of the animal in the input image by regressing from a stored extremity anchor pose; and a pose module configured to generate a whole body pose of the animal in the input image based on the first pose, the second pose, and the third pose.Type: ApplicationFiled: September 13, 2022Publication date: January 19, 2023Applicants: NAVER CORPORATION, NAVER LABS CORPORATIONInventors: Philippe WEINZAEPFEL, Romain Bregier, Hadrien Combaluzier, Vincent Leroy, Gregory Rogez
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Patent number: 11494932Abstract: A system for generating whole body poses includes: a body regression module configured to generate a first pose of a body of an animal in an input image by regressing from a stored body anchor pose; a face regression module configured to generate a second pose of a face of the animal in the input image by regressing from a stored face anchor pose; an extremity regression module configured to generate a third pose of an extremity of the animal in the input image by regressing from a stored extremity anchor pose; and a pose module configured to generate a whole body pose of the animal in the input image based on the first pose, the second pose, and the third pose.Type: GrantFiled: June 2, 2020Date of Patent: November 8, 2022Assignees: NAVER CORPORATION, NAVER LABS CORPORATIONInventors: Philippe Weinzaepfel, Romain Bregier, Hadrien Combaluzier, Vincent Leroy, Gregory Rogez
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Publication number: 20210374989Abstract: A system for generating whole body poses includes: a body regression module configured to generate a first pose of a body of an animal in an input image by regressing from a stored body anchor pose; a face regression module configured to generate a second pose of a face of the animal in the input image by regressing from a stored face anchor pose; an extremity regression module configured to generate a third pose of an extremity of the animal in the input image by regressing from a stored extremity anchor pose; and a pose module configured to generate a whole body pose of the animal in the input image based on the first pose, the second pose, and the third pose.Type: ApplicationFiled: June 2, 2020Publication date: December 2, 2021Applicants: NAVER CORPORATION, NAVER LABS CORPORATIONInventors: Philippe WEINZAEPFEL, Romain BREGIER, Hadrien COMBALUZIER, Vincent LEROY, Gregory ROGEZ
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Publication number: 20170050315Abstract: A method of using a polyarticulated system associated with a vision system for automatically picking up an article situated in a zone suitable for receiving at least one article, the polyarticulated system including at least one pick-up member suitable for taking hold of an article via at least one specific zone of the article. In accordance with the invention, the method includes at least the steps of: taking an image of the article-receiving zone; processing the information resulting from the 3D image and identifying all of the specific zones that are present on the articles to be taken hold of, and that are compatible with the pick-up member(s); locating the identified compatible specific zone(s); choosing one of the located compatible specific zones and automatically defining a pick path; and taking hold of the corresponding article along the defined path.Type: ApplicationFiled: April 23, 2015Publication date: February 23, 2017Inventors: Herve Henry, Florian Sella, Romain Bregier