Patents by Inventor Rae Chan Jeong

Rae Chan Jeong 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: 20240104882
    Abstract: System and method for detecting a target object within an environment, including obtaining a two-dimensional input image of a scene within the environment; generating, using a machine learning based feature generation model, a feature map of respective feature vectors for the input image; comparing the feature vectors included in the feature map with reference feature vectors generated by the feature generation model based on reference points within a reference image, wherein the reference image includes an reference object instance that corresponds to the target object; based on the comparing, identifying points of interest in the input image that correspond to the reference points; and determining a presence of the target object in the environment based on the comparing.
    Type: Application
    Filed: September 22, 2023
    Publication date: March 28, 2024
    Inventor: Rae Chan JEONG
  • Publication number: 20240042600
    Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for data-driven robotic control. One of the methods includes maintaining robot experience data; obtaining annotation data; training, on the annotation data, a reward model; generating task-specific training data for the particular task, comprising, for each experience in a second subset of the experiences in the robot experience data: processing the observation in the experience using the trained reward model to generate a reward prediction, and associating the reward prediction with the experience; and training a policy neural network on the task-specific training data for the particular task, wherein the policy neural network is configured to receive a network input comprising an observation and to generate a policy output that defines a control policy for a robot performing the particular task.
    Type: Application
    Filed: June 8, 2023
    Publication date: February 8, 2024
    Inventors: Serkan Cabi, Ziyu Wang, Alexander Novikov, Ksenia Konyushkova, Sergio Gomez Colmenarejo, Scott Ellison Reed, Misha Man Ray Denil, Jonathan Karl Scholz, Oleg O. Sushkov, Rae Chan Jeong, David Barker, David Budden, Mel Vecerik, Yusuf Aytar, Joao Ferdinando Gomes de Freitas
  • Patent number: 11712799
    Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for data-driven robotic control. One of the methods includes maintaining robot experience data; obtaining annotation data; training, on the annotation data, a reward model; generating task-specific training data for the particular task, comprising, for each experience in a second subset of the experiences in the robot experience data: processing the observation in the experience using the trained reward model to generate a reward prediction, and associating the reward prediction with the experience; and training a policy neural network on the task-specific training data for the particular task, wherein the policy neural network is configured to receive a network input comprising an observation and to generate a policy output that defines a control policy for a robot performing the particular task.
    Type: Grant
    Filed: September 14, 2020
    Date of Patent: August 1, 2023
    Assignee: DeepMind Technologies Limited
    Inventors: Serkan Cabi, Ziyu Wang, Alexander Novikov, Ksenia Konyushkova, Sergio Gomez Colmenarejo, Scott Ellison Reed, Misha Man Ray Denil, Jonathan Karl Scholz, Oleg O. Sushkov, Rae Chan Jeong, David Barker, David Budden, Mel Vecerik, Yusuf Aytar, Joao Ferdinando Gomes de Freitas
  • Publication number: 20230214649
    Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for training an action selection system using reinforcement learning techniques. In one aspect, a method comprises at each of multiple iterations: obtaining a batch of experience, each experience tuple comprising: a first observation, an action, a second observation, and a reward; for each experience tuple, determining a state value for the second observation, comprising: processing the first observation using a policy neural network to generate an action score for each action in a set of possible actions; sampling multiple actions from the set of possible actions in accordance with the action scores; processing the second observation using a Q neural network to generate a Q value for each sampled action; and determining the state value for the second observation; and determining an update to current values of the Q neural network parameters using the state values.
    Type: Application
    Filed: July 27, 2021
    Publication date: July 6, 2023
    Inventors: Rae Chan Jeong, Jost Tobias Springenberg, Jacqueline Ok-chan Kay, Daniel Hai Huan Zheng, Alexandre Galashov, Nicolas Manfred Otto Heess, Francesco Nori
  • Publication number: 20220343157
    Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for training a policy neural network having policy parameters. One of the methods includes sampling a mini-batch comprising one or more observation-action-reward tuples generated as a result of interactions of a first agent with a first environment; determining an update to current values of the Q network parameters by minimizing a robust entropy-regularized temporal difference (TD) error that accounts for possible perturbations of the states of the first environment represented by the observations in the observation-action-reward tuples; and determining, using the Q-value neural network, an update to the policy network parameters using the sampled mini-batch of observation-action-reward tuples.
    Type: Application
    Filed: June 17, 2020
    Publication date: October 27, 2022
    Inventors: Daniel J. Mankowitz, Nir Levine, Rae Chan Jeong, Abbas Abdolmaleki, Jost Tobias Springenberg, Todd Andrew Hester, Timothy Arthur Mann, Martin Riedmiller
  • Publication number: 20210103815
    Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for training a policy neural network for use in controlling a real-world agent in a real-world environment. One of the methods includes training the policy neural network by optimizing a first task-specific objective that measures a performance of the policy neural network in controlling a simulated version of the real-world agent; and then training the policy neural network by jointly optimizing (i) a self-supervised objective that measures at least a performance of internal representations generated by the policy neural network on a self-supervised task performed on real-world data and (ii) a second task-specific objective that measures the performance of the policy neural network in controlling the simulated version of the real-world agent.
    Type: Application
    Filed: October 7, 2020
    Publication date: April 8, 2021
    Inventors: Rae Chan Jeong, Yusuf Aytar, David Khosid, Yuxiang Zhou, Jacqueline Ok-chan Kay, Thomas Lampe, Konstantinos Bousmalis, Francesco Nori
  • Publication number: 20210078169
    Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for data-driven robotic control. One of the methods includes maintaining robot experience data; obtaining annotation data; training, on the annotation data, a reward model; generating task-specific training data for the particular task, comprising, for each experience in a second subset of the experiences in the robot experience data: processing the observation in the experience using the trained reward model to generate a reward prediction, and associating the reward prediction with the experience; and training a policy neural network on the task-specific training data for the particular task, wherein the policy neural network is configured to receive a network input comprising an observation and to generate a policy output that defines a control policy for a robot performing the particular task.
    Type: Application
    Filed: September 14, 2020
    Publication date: March 18, 2021
    Inventors: Serkan Cabi, Ziyu Wang, Alexander Novikov, Ksenia Konyushkova, Sergio Gomez Colmenarejo, Scott Ellison Reed, Misha Man Ray Denil, Jonathan Karl Scholz, Oleg O. Sushkov, Rae Chan Jeong, David Barker, David Budden, Mel Vecerik, Yusuf Aytar, Joao Ferdinando Gomes de Freitas