Patents by Inventor Marcus Anthony BRUBAKER

Marcus Anthony BRUBAKER 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: 20230153957
    Abstract: A noise model is iteratively trained to simulate introduction of noise by a capture device, by use of a denoiser and a training data set of pairs of noisy signals. First and second noisy signals of each pair are independently sampled by the capture device from source information corresponding to the pair. Each iteration of training obtains first and second denoised signals from respective noisy signals, then optimizes at least one loss function which sums first and second terms to train both the noise model and the denoiser, where the first term is based on the first denoised signal and the second noisy signal, and the second term is based on the second denoised signal and the first noisy signal. By using noisy samples, the complexities of obtaining “clean” signals are avoided. By using “cross-sample” loss functions, convergence on undesired training results is avoided without complex regularization.
    Type: Application
    Filed: November 10, 2022
    Publication date: May 18, 2023
    Applicant: SAMSUNG ELECTRONICS CO., LTD.
    Inventors: Ali MALEKY, Marcus Anthony BRUBAKER, Michael Scott BROWN
  • Publication number: 20230100213
    Abstract: A computer-implemented system and method for estimating a Cumulative Distribution Function (CDF) are provided. The method includes: receive input data representing a volume V of a target space indicating a future target event; compute, using the trained neural network, an estimation of a first flux through a boundary of the volume V; compute, using the trained neural network, an estimation of a second flux through a boundary of a volume W of a base space based on the estimation of the first flux through the boundary of the volume V; generate, using the trained neural network, an estimation of a CDF for the volume V based on the second flux through the boundary of the volume W; compute a probability for the future target event based on the estimated CDF for the volume V; and generate a control command based on the probability for the future target event.
    Type: Application
    Filed: September 27, 2022
    Publication date: March 30, 2023
    Inventors: Chandramouli Shama SASTRY, Alexander Radomir Branislav RADOVIC, Marcus Anthony BRUBAKER, Andreas Steffen Michael LEHRMANN
  • Publication number: 20220383109
    Abstract: A system for machine learning architecture for time series data prediction. The system may be configured to: maintain a data set representing a neural network having a plurality of weights; obtain time series data associated with a data query; generate, using the neural network and based on the time series data, a predicted value based on a sampled realization of the time series data and a normalizing flow model, the normalizing flow model based on a latent continuous-time stochastic process having a stationary marginal distribution and bounded variance; and generate a signal providing an indication of the predicted value associated with the data query.
    Type: Application
    Filed: May 20, 2022
    Publication date: December 1, 2022
    Inventors: Ruizhi DENG, Marcus Anthony BRUBAKER, Gregory Peter MORI, Andreas Steffen Michael LEHRMANN
  • Publication number: 20220383075
    Abstract: The methods and systems are directed to computational approaches for training and using machine learning algorithms to predict the conditional marginal distributions of the position of agents at flexible evaluation horizons and can enables more efficient path planning. These methods model agent movement by training a deep neural network to predict the position of an agent through time. A neural ordinary differential equation (neural ODE) that represents this neural network can be used to determine the log-likelihood of the agent's position as it moves in time.
    Type: Application
    Filed: May 21, 2022
    Publication date: December 1, 2022
    Inventors: Alexander RADOVIC, Jiawei HE, Janahan Mathuran RAMANAN, Marcus Anthony BRUBAKER, Andreas Steffen Michael LEHRMANN
  • Patent number: 11515002
    Abstract: Disclosed herein are systems and methods for efficient 3D structure estimation from images of a transmissive object, including cryo-EM images. The method generally comprises, receiving a set of 2D images of a target specimen from an electron microscope, carrying out a reconstruction technique to determine a likely molecular structure, and outputting the estimated 3D structure of the specimen. The described reconstruction technique comprises: establishing a probabilistic model of the target structure; optimizing using stochastic optimization to determine which structure is most likely; and, optionally utilizing importance sampling to minimize computational burden.
    Type: Grant
    Filed: February 28, 2019
    Date of Patent: November 29, 2022
    Inventors: Marcus Anthony Brubaker, Ali Punjani, David James Fleet
  • Publication number: 20210256358
    Abstract: Systems and methods for machine learning architecture for time series data prediction. The system may include a processor and a memory storing processor-executable instructions. The processor-executable instructions, when executed, may configure the processor to: obtain time series data associated with a data query; generate a predicted value based on a sampled realization of the time series data and a continuous time generative model, the continuous time generative model trained to define an invertible mapping to maximize a log-likelihood of a set of predicted values for a time range associated with the time series data; and generate a signal providing an indication of the predicted value associated with the data query.
    Type: Application
    Filed: February 8, 2021
    Publication date: August 19, 2021
    Inventors: Ruizhi DENG, Bo CHANG, Marcus Anthony BRUBAKER, Gregory Peter MORI, Andreas Steffen Michael LEHRMANN
  • Publication number: 20200066371
    Abstract: Disclosed herein are systems and methods for efficient 3D structure estimation from images of a transmissive object, including cryo-EM images. The method generally comprises, receiving a set of 2D images of a target specimen from an electron microscope, carrying out a reconstruction technique to determine a likely molecular structure, and outputting the estimated 3D structure of the specimen. The described reconstruction technique comprises: establishing a probabilistic model of the target structure; optimizing using stochastic optimization to determine which structure is most likely; and, optionally utilizing importance sampling to minimize computational burden.
    Type: Application
    Filed: February 28, 2019
    Publication date: February 27, 2020
    Inventors: Marcus Anthony BRUBAKER, Ali PUNJANI, David James FLEET
  • Patent number: 10282513
    Abstract: Disclosed herein are systems and methods for efficient 3D structure estimation from images of a transmissive object, including cryo-EM images. The method generally comprises, receiving a set of 2D images of a target specimen from an electron microscope, carrying out a reconstruction technique to determine a likely molecular structure, and outputting the estimated 3D structure of the specimen. The described reconstruction technique comprises: establishing a probabilistic model of the target structure; optimizing using stochastic optimization to determine which structure is most likely; and, optionally utilizing importance sampling to minimize computational burden.
    Type: Grant
    Filed: October 13, 2016
    Date of Patent: May 7, 2019
    Inventors: Marcus Anthony Brubaker, Ali Punjani, David James Fleet
  • Patent number: 10242483
    Abstract: A system and a method for image alignment between at least two images to a three-dimensional model. The method including: determining a lower bound and an upper bound of an acceptable likelihood of mismatch between the at least two images; evaluating the likelihood of mismatch between the at least two images over a set of poses (r), shifts (t), or both poses (r) and shifts (t); and discarding those evaluations resulting beyond the lower bound and upper bound.
    Type: Grant
    Filed: August 14, 2017
    Date of Patent: March 26, 2019
    Inventors: Ali Punjani, Marcus Anthony Brubaker, David James Fleet
  • Publication number: 20180018808
    Abstract: A system and a method for image alignment between at least two images to a three-dimensional model. The method including: determining a lower bound and an upper bound of an acceptable likelihood of mismatch between the at least two images; evaluating the likelihood of mismatch between the at least two images over a set of poses (r), shifts (t), or both poses (r) and shifts (t); and discarding those evaluations resulting beyond the lower bound and upper bound.
    Type: Application
    Filed: August 14, 2017
    Publication date: January 18, 2018
    Inventors: Ali PUNJANI, Marcus Anthony BRUBAKER, David James FLEET
  • Patent number: 9830732
    Abstract: A system and a method for image alignment between at least two images to a three-dimensional model. The method including: determining a lower bound and an upper bound of an acceptable likelihood of mismatch between the at least two images; evaluating the likelihood of mismatch between the at least two images over a set of poses (r), shifts (t), or both poses (r) and shifts (t); and discarding those evaluations resulting beyond the lower bound and upper bound.
    Type: Grant
    Filed: May 16, 2017
    Date of Patent: November 28, 2017
    Assignee: THE GOVERNING COUNCIL OF THE UNIVERSITY OF TORONTO
    Inventors: Ali Punjani, Marcus Anthony Brubaker, David James Fleet
  • Publication number: 20170330366
    Abstract: A system and a method for image alignment between at least two images to a three-dimensional model. The method including: determining a lower bound and an upper bound of an acceptable likelihood of mismatch between the at least two images; evaluating the likelihood of mismatch between the at least two images over a set of poses (r), shifts (t), or both poses (r) and shifts (t); and discarding those evaluations resulting beyond the lower bound and upper bound.
    Type: Application
    Filed: May 16, 2017
    Publication date: November 16, 2017
    Inventors: Ali PUNJANI, Marcus Anthony BRUBAKER, David James FLEET
  • Publication number: 20170103161
    Abstract: Disclosed herein are systems and methods for efficient 3D structure estimation from images of a transmissive object, including cryo-EM images. The method generally comprises, receiving a set of 2D images of a target specimen from an electron microscope, carrying out a reconstruction technique to determine a likely molecular structure, and outputting the estimated 3D structure of the specimen. The described reconstruction technique comprises: establishing a probabilistic model of the target structure; optimizing using stochastic optimization to determine which structure is most likely; and, optionally utilizing importance sampling to minimize computational burden.
    Type: Application
    Filed: October 13, 2016
    Publication date: April 13, 2017
    Inventors: Marcus Anthony BRUBAKER, Ali PUNJANI, David James FLEET