Patents by Inventor Jonathan Gelsey

Jonathan Gelsey 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: 11651192
    Abstract: Systems and processes for training and compressing a convolutional neural network model include the use of quantization and layer fusion. Quantized training data is passed through a convolutional layer of a neural network model to generate convolutional results during a first iteration of training the neural network model. The convolutional results are passed through a batch normalization layer of the neural network model to update normalization parameters of the batch normalization layer. The convolutional layer is fused with the batch normalization layer to generate a first fused layer and the fused parameters of the fused layer are quantized. The quantized training data is passed through the fused layer using the quantized fused parameters to generate output data, which may be quantized for a subsequent layer in the training iteration.
    Type: Grant
    Filed: February 11, 2020
    Date of Patent: May 16, 2023
    Assignee: Apple Inc.
    Inventors: James C. Gabriel, Mohammad Rastegari, Hessam Bagherinezhad, Saman Naderiparizi, Anish Prabhu, Sophie Lebrecht, Jonathan Gelsey, Sayyed Karen Khatamifard, Andrew L. Chronister, David Bakin, Andrew Z. Luo
  • Publication number: 20200257960
    Abstract: Systems and processes for training and compressing a convolutional neural network model include the use of quantization and layer fusion. Quantized training data is passed through a convolutional layer of a neural network model to generate convolutional results during a first iteration of training the neural network model. The convolutional results are passed through a batch normalization layer of the neural network model to update normalization parameters of the batch normalization layer. The convolutional layer is fused with the batch normalization layer to generate a first fused layer and the fused parameters of the fused layer are quantized. The quantized training data is passed through the fused layer using the quantized fused parameters to generate output data, which may be quantized for a subsequent layer in the training iteration.
    Type: Application
    Filed: February 11, 2020
    Publication date: August 13, 2020
    Inventors: James C. GABRIEL, Mohammad RASTEGARI, Hessam BAGHERINEZHAD, Saman NADERIPARIZI, Anish PRABHU, Sophie LEBRECHT, Jonathan GELSEY, Sayyed Karen KHATAMIFARD, Andrew L. CHRONISTER, David BAKIN, Andrew Z. LUO
  • Publication number: 20060095504
    Abstract: A method and system for allowing optical character recognition (OCR) information retrieval via a thin-client user interface. The method includes receiving an information request from a user via a thin-client user interface, where the information request is an image. Next, optical character recognition is performed on the image to produce a string. A data network is then searched to extract content based on the string. Finally, the extracted content is displayed to the user.
    Type: Application
    Filed: August 24, 2004
    Publication date: May 4, 2006
    Inventor: Jonathan Gelsey