Patents by Inventor Johannes Maximilian Doellinger

Johannes Maximilian Doellinger 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: 11960291
    Abstract: A computer-implemented method for determining a motion trajectory for a mobile robot based on an occupancy prior indicating probabilities of presence of dynamic objects and/or individuals in a map of an environment. Occupancy priors are determined by a reward function defined by reward function parameters. The determining of the reward function parameters includes: providing semantic maps; providing training trajectories for each of semantic maps; computing a gradient as a difference between an expected mean feature count and an empirical mean feature count depending on each of the semantic maps and on each of the training trajectories, the empirical mean feature count is the average number of features accumulated over the provided training trajectories of the semantic maps, wherein the expected mean feature count is the average number of features accumulated by trajectories generated depending on the current reward function parameters; and updating the reward function parameters depending on the gradient.
    Type: Grant
    Filed: June 11, 2021
    Date of Patent: April 16, 2024
    Assignee: ROBERT BOSCH GMBH
    Inventors: Andrey Rudenko, Johannes Maximilian Doellinger, Kai Oliver Arras, Luigi Palmieri
  • Publication number: 20240010236
    Abstract: A method for selecting a driving maneuver to be carried out by an at least semi-autonomously driving vehicle is disclosed. The method includes (i) using measurement data of at least one sensor carried by the vehicle, creating a representation of the situation the vehicle is in, (ii) mapping the representation of the situation to a probability distribution by way of a trained machine learning model, which probability distribution specifies a probability for every driving maneuver from a predefined catalog of available driving maneuvers, with which said driving maneuver is carried out, (iii) selecting a driving maneuver from the probability distribution as the driving maneuver to be carried out, (iv) in addition to using at least one aspect of the situation the vehicle is in, a subset of driving maneuvers which are disallowed in this situation is determined, and (v) this disallowed driving maneuver is prevented from being carried out.
    Type: Application
    Filed: November 30, 2021
    Publication date: January 11, 2024
    Inventors: Felix Schmitt, Martin Stoll, Johannes Goth, Holger Andreas Banzhaf, Johannes Maximilian Doellinger, Michael Hanselmann
  • Patent number: 11253997
    Abstract: A method for tracking multiple target objects, moving objects to be tracked being projected onto a grid map having grid cells, the method including the following tasks to be executed in each time: computing the velocity distribution for the next time step with the aid of a transition velocity distribution, which indicates how the objects associated with a grid cell in question move from one time step to the next, based on the preceding velocity distribution; for each grid cell, calculating a transitional probability information item, which indicates, for objects in each grid cell, probabilities of the objects in question reaching possible, further grid cells, as a function of the velocity distribution; calculating an occupancy probability for each grid cell for a subsequent time, based on the transitional probability information item; operating a system as a function of the occupancy probabilities for the grid cells.
    Type: Grant
    Filed: January 29, 2019
    Date of Patent: February 22, 2022
    Assignee: Robert Bosch GmbH
    Inventors: Markus Spies, Johannes Maximilian Doellinger, Liangcheng Fu
  • Publication number: 20220048187
    Abstract: A computer-implemented method for determining a motion trajectory for a mobile robot based on an occupancy prior indicating probabilities of presence of dynamic objects and/or individuals in a map of an environment. Occupancy priors are determined by a reward function defined by reward function parameters. The determining of the reward function parameters includes: providing semantic maps; providing training trajectories for each of semantic maps; computing a gradient as a difference between an expected mean feature count and an empirical mean feature count depending on each of the semantic maps and on each of the training trajectories, the empirical mean feature count is the average number of features accumulated over the provided training trajectories of the semantic maps, wherein the expected mean feature count is the average number of features accumulated by trajectories generated depending on the current reward function parameters; and updating the reward function parameters depending on the gradient.
    Type: Application
    Filed: June 11, 2021
    Publication date: February 17, 2022
    Inventors: Andrey Rudenko, Johannes Maximilian Doellinger, Kai Oliver Arras, Luigi Palmieri
  • Publication number: 20210341885
    Abstract: A method of training a control strategy for a control. An exploration strategy for a current version of the control strategy is determined in each of several iterations. Several simulation runs are carried out, in each of which an action is selected in accordance with the exploration strategy, and it being checked if the selected action is safe, until a safe action has been selected or a maximum number of actions greater than or equal to two has been selected. A follow-up state of the state in the sequence of states is ascertained. The sequence of states are collected as data of the simulation run; for the iteration. The value of a loss function is ascertained over the data of the executed simulation runs and the control strategy is adapted so that the value of the loss function is reduced.
    Type: Application
    Filed: March 3, 2021
    Publication date: November 4, 2021
    Inventors: Felix Schmitt, Johannes Maximilian Doellinger
  • Publication number: 20190232487
    Abstract: A method for tracking multiple target objects, moving objects to be tracked being projected onto a grid map having grid cells, the method including the following tasks to be executed in each time: computing the velocity distribution for the next time step with the aid of a transition velocity distribution, which indicates how the objects associated with a grid cell in question move from one time step to the next, based on the preceding velocity distribution; for each grid cell, calculating a transitional probability information item, which indicates, for objects in each grid cell, probabilities of the objects in question reaching possible, further grid cells, as a function of the velocity distribution; calculating an occupancy probability for each grid cell for a subsequent time, based on the transitional probability information item; operating a system as a function of the occupancy probabilities for the grid cells.
    Type: Application
    Filed: January 29, 2019
    Publication date: August 1, 2019
    Inventors: Markus Spies, Johannes Maximilian Doellinger, Liangcheng Fu