Patents by Inventor RINON GAL

RINON GAL 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: 12614316
    Abstract: A text-to-image machine learning model takes a user input text and generates an image matching the given description. While text-to-image models currently exist, there is a desire to personalize these models on a per-user basis, including to configure the models to generate images of specific, unique user-provided concepts (via images of specific objects or styles) while allowing the user to use free text “prompts” to modify their appearance or compose them in new roles and novel scenes. Current personalization solutions either generate images with only coarse-grained resemblance to the provided concept(s) or require fine tuning of the entire model which is costly and can adversely affect the model.
    Type: Grant
    Filed: October 31, 2023
    Date of Patent: April 28, 2026
    Assignee: NVIDIA CORPORATION
    Inventors: Yuval Atzmon, Yoad Tewel, Rinon Gal, Gal Chechik
  • Publication number: 20250363690
    Abstract: Seamlessly moving, or dragging, an object from one location in an image to another location in the image is, in practice, a challenge especially for current generative image editing methods. Current methods that tackle this problem rely on time-consuming Low Ranked Adaptation (LoRA) training per image, training a designated model on a large dataset or utilizing classifier-free guidance (CFG) with specific objectives. However, these methods are not robust and struggle to operate reliably in a real-world setting due to lacking spatial reasoning. The present disclosure provides a diffusion model that can harness spatial understanding when relocating an object in an image, thereby resulting in a more seamless result (e.g. fewer visual artifacts).
    Type: Application
    Filed: February 27, 2025
    Publication date: November 27, 2025
    Inventors: Omri Avrahami, Weili Nie, Rinon Gal, Arash Vahdat, Gal Chechik
  • Publication number: 20240249446
    Abstract: A text-to-image machine learning model takes a user input text and generates an image matching the given description. While text-to-image models currently exist, there is a desire to personalize these models on a per-user basis, including to configure the models to generate images of specific, unique user-provided concepts (via images of specific objects or styles) while allowing the user to use free text “prompts” to modify their appearance or compose them in new roles and novel scenes. Current personalization solutions either generate images with only coarse-grained resemblance to the provided concept(s) or require fine tuning of the entire model which is costly and can adversely affect the model.
    Type: Application
    Filed: October 31, 2023
    Publication date: July 25, 2024
    Inventors: Yuval Atzmon, Yoad Tewel, Rinon Gal, Gal Chechik
  • Patent number: 11798256
    Abstract: Systems and methods for processing documents based on a cardinal graph convolution network by generating cardinal graph representations representing words as single nodes with edges connected between neighbouring nodes in four cardinal directions. Features tensors are generated for nodes of the cardinal graph representation and the cardinal directions are encoded to generate an adjacency tensor having node neighbour indices. Entries of the adjacency tensor are transformed into a one-hot encoding of the node neighbour indices. Neighbourhood feature tensors are created over node indices and the features in each block may be scaled, convolved and reduced into new feature tensors.
    Type: Grant
    Filed: December 27, 2021
    Date of Patent: October 24, 2023
    Inventors: Rinon Gal, Roy Shilkrot, Amos Simantov
  • Patent number: 11676411
    Abstract: Systems and methods for automatic information retrieval from imaged documents. Deep network architectures retrieve information from imaged documents using a neuronal visual-linguistic mechanism including a geometrically trained neuronal network. An expense management platform uses the neuronal visual-linguistic mechanism to determine geometric-semantic information of the imaged document.
    Type: Grant
    Filed: December 28, 2020
    Date of Patent: June 13, 2023
    Inventors: Amos Simantov, Roy Shilkrot, Nimrod Morag, Rinon Gal
  • Publication number: 20220122368
    Abstract: Systems and methods for processing documents based on a cardinal graph convolution network by generating cardinal graph representations representing words as single nodes with edges connected between neighbouring nodes in four cardinal directions. Features tensors are generated for nodes of the cardinal graph representation and the cardinal directions are encoded to generate an adjacency tensor having node neighbour indices. Entries of the adjacency tensor are transformed into a one-hot encoding of the node neighbour indices. Neighbourhood feature tensors are created over node indices and the features in each block may be scaled, convolved and reduced into new feature tensors.
    Type: Application
    Filed: December 27, 2021
    Publication date: April 21, 2022
    Inventors: RINON GAL, ROY SHILKROT, AMOS SIMANTOV
  • Patent number: 11238277
    Abstract: Systems and methods for processing documents based on a cardinal graph convolution network by generating cardinal graph representations representing words as single nodes with edges connected between neighbouring nodes in four cardinal directions. Features tensors are generated for nodes of the cardinal graph representation and the cardinal directions are encoded to generate an adjacency tensor having node neighbour indices. Entries of the adjacency tensor are transformed into a one-hot encoding of the node neighbour indices. Neighbourhood feature tensors are created over node indices and the features in each block may be scaled, convolved and reduced into new feature tensors.
    Type: Grant
    Filed: June 11, 2020
    Date of Patent: February 1, 2022
    Inventors: Rinon Gal, Roy Shilkrot, Amos Simantov
  • Publication number: 20210248367
    Abstract: Systems and methods for processing documents based on a cardinal graph convolution network by generating cardinal graph representations representing words as single nodes with edges connected between neighbouring nodes in four cardinal directions. Features tensors are generated for nodes of the cardinal graph representation and the cardinal directions are encoded to generate an adjacency tensor having node neighbour indices. Entries of the adjacency tensor are transformed into a one-hot encoding of the node neighbour indices. Neighbourhood feature tensors are created over node indices and the features in each block may be scaled, convolved and reduced into new feature tensors.
    Type: Application
    Filed: June 11, 2020
    Publication date: August 12, 2021
    Inventors: RINON GAL, ROY SHILKROT, AMOS SIMANTOV
  • Publication number: 20210117665
    Abstract: Systems and methods for automatic information retrieval from imaged documents. Deep network architectures retrieve information from imaged documents using a neuronal visual-linguistic mechanism including a geometrically trained neuronal network. An expense management platform uses the neuronal visual-linguistic mechanism to determine geometric-semantic information of the imaged document.
    Type: Application
    Filed: December 28, 2020
    Publication date: April 22, 2021
    Inventors: AMOS SIMANTOV, ROY SHILKROT, NIMROD MORAG, RINON GAL
  • Patent number: 10936863
    Abstract: Systems and methods for automatic information retrieval from imaged documents. Deep network architectures retrieve information from imaged documents using a neuronal visual-linguistic mechanism including a geometrically trained neuronal network. An expense management platform uses the neuronal visual-linguistic mechanism to determine geometric-semantic information of the imaged document.
    Type: Grant
    Filed: November 13, 2018
    Date of Patent: March 2, 2021
    Assignee: WAY2VAT LTD.
    Inventors: Amos Simantov, Roy Shilkrot, Nimrod Morag, Rinon Gal
  • Publication number: 20200110930
    Abstract: Systems and methods for automatic information retrieval from imaged documents. Deep network architectures retrieve information from imaged documents using a neuronal visual-linguistic mechanism including a geometrically trained neuronal network. An expense management platform uses the neuronal visual-linguistic mechanism to determine geometric-semantic information of the imaged document.
    Type: Application
    Filed: November 13, 2018
    Publication date: April 9, 2020
    Inventors: AMOS SIMANTOV, ROY SHILKROT, NIMROD MORAG, RINON GAL