Patents by Inventor Mohammad Rastegari

Mohammad Rastegari 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: 20200184037
    Abstract: In one embodiment, a method includes receiving a user request from a client device associated with a user, accessing an instructional file comprising one or more binary inference engines and one or more encrypted model data corresponding to the one or more binary inference engines, respectively, selecting a binary inference engine from the one or more binary inference engines in the accessed instructional file based on the user request, sending a validation request for a permission to execute the binary inference engine to a licensing server, receiving the permission from the licensing server, decrypting the encrypted model data corresponding to the binary inference engine by a decryption key, executing the binary inference engine based on the user request and the decrypted model data, and sending one or more execution results responsive to the execution of the binary inference engine to the client device.
    Type: Application
    Filed: December 10, 2018
    Publication date: June 11, 2020
    Inventors: Peter Zatloukal, Matthew Weaver, Alexander Kirchhoff, Dmitry Belenko, Ali Farhadi, Mohammad Rastegari, Andrew Luke Chronister, Keith Patrick Wyss, Chenfan Sun
  • Publication number: 20190340524
    Abstract: In one embodiment, a method includes providing, to a client system of a user, a user interface for display. The user interface may include a first set of options for selecting an artificial intelligence (AI) task for integrating into a user application, a second set of options for selecting one or more devices on which the user wants to deploy the selected AI task, and a third set of options for selecting one or more performance constraints specific to the selected devices. User specifications may be received based on user selections in the first, second, and third sets of options. A custom AI model may be generated based on the user specifications and sent to the client system of the user for integrating into the user application. The custom AI model once integrated may enable the user application to perform the selected AI task on the selected devices.
    Type: Application
    Filed: May 6, 2019
    Publication date: November 7, 2019
    Inventors: Alexander James Oscar Craver Kirchhoff, Ali Farhadi, Anish Jnyaneshwar Prabhu, Carlo Eduardo Cabanero del Mundo, Daniel Carl Tormoen, Hessam Bagherinezhad, Matthew S. Weaver, Maxwell Christian Horton, Mohammad Rastegari, Robert Stephen Karl, JR., Sophie Lebrecht
  • Publication number: 20190325269
    Abstract: Systems and methods are disclosed for training neural networks using labels for training data that are dynamically refined using neural networks and using these trained neural networks to perform detection and/or classification of one or more objects appearing in an image. Particular embodiments may generate a set of crops of images from a corpus of images, then apply a first neural network to the set of crops to obtain a set of respective outputs. A second neural network may then be trained using the set of crops as training examples. The set of respective outputs may be applied as labels for the set of crops.
    Type: Application
    Filed: April 16, 2019
    Publication date: October 24, 2019
    Inventors: Hessam Bagherinezhad, Maxwell Horton, Mohammad Rastegari, Ali Farhadi
  • Publication number: 20190286953
    Abstract: Systems, apparatuses, and methods for efficiently and accurately processing an image in order to detect and identify one or more objects contained in the image, and methods that may be implemented on mobile or other resource constrained devices. Embodiments of the invention introduce simple, efficient, and accurate approximations to the functions performed by a convolutional neural network (CNN); this is achieved by binarization (i.e., converting one form of data to binary values) of the weights and of the intermediate representations of data in a convolutional neural network. The inventive binarization methods include optimization processes that determine the best approximations of the convolution operations that are part of implementing a CNN using binary operations.
    Type: Application
    Filed: June 3, 2019
    Publication date: September 19, 2019
    Inventors: Ali Farhadi, Mohammad Rastegari
  • Patent number: 10311342
    Abstract: Systems, apparatuses, and methods for efficiently and accurately processing an image in order to detect and identify one or more objects contained in the image, and methods that may be implemented on mobile or other resource constrained devices. Embodiments of the invention introduce simple, efficient, and accurate approximations to the functions performed by a convolutional neural network (CNN); this is achieved by binarization (i.e., converting one form of data to binary values) of the weights and of the intermediate representations of data in a convolutional neural network. The inventive binarization methods include optimization processes that determine the best approximations of the convolution operations that are part of implementing a CNN using binary operations.
    Type: Grant
    Filed: April 13, 2017
    Date of Patent: June 4, 2019
    Assignee: XNOR.ai, Inc.
    Inventors: Ali Farhadi, Mohammad Rastegari
  • Publication number: 20190026600
    Abstract: Systems and methods are disclosed for lookup-based convolutional neural networks. For example, methods may include applying a convolutional neural network to image data based on an image to obtain an output, in which a layer of the convolutional network includes filters with weights that are stored as a dictionary (D) of channel weight vectors, a respective lookup index tensor (I) that indexes the dictionary, and a respective lookup coefficient tensor (C), and in which applying the convolutional neural network includes: convolving the channel weight vectors of the dictionary (D) with an input tensor based on the image to obtain an input dictionary (S), and combining entries of the input dictionary (S) that are indexed with indices from the respective lookup index tensor (I) and multiplied with corresponding coefficients from the respective lookup coefficient tensor (C); and storing, displaying, or transmitting data based on the output of the convolutional neural network.
    Type: Application
    Filed: July 17, 2018
    Publication date: January 24, 2019
    Inventors: Hessam Bagherinezhad, Ali Farhadi, Mohammad Rastegari
  • Patent number: 9159123
    Abstract: An image prior as a shared basis mixture model is described. In one or more implementations, a plurality of image patches are generated from one or more images. A shared basis mixture model is learned to model an image patch distribution of the plurality of image patches from the one or more images as part of a Gaussian mixture model. An image may then be reconstructed using the shared basis mixture model as an image prior.
    Type: Grant
    Filed: January 24, 2014
    Date of Patent: October 13, 2015
    Assignee: Adobe Systems Incorporated
    Inventors: Mohammad Rastegari, Aaron P. Hertzmann, Elya Shechtman
  • Publication number: 20150213583
    Abstract: An image prior as a shared basis mixture model is described. In one or more implementations, a plurality of image patches are generated from one or more images. A shared basis mixture model is learned to model an image patch distribution of the plurality of image patches from the one or more images as part of a Gaussian mixture model. An image may then be reconstructed using the shared basis mixture model as an image prior.
    Type: Application
    Filed: January 24, 2014
    Publication date: July 30, 2015
    Applicant: ADOBE SYSTEMS INCORPORATED
    Inventors: Mohammad Rastegari, Aaron P. Hertzmann, Elya Shechtman