Patents by Inventor Jason Z. Dong

Jason Z. Dong 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: 10482374
    Abstract: An ensemble learning based image classification system contains multiple cellular neural networks (CNN) based integrated circuits (ICs) operatively coupling together as a set of base learners of an ensemble for an image classification task. Each CNN based IC is configured with at least one distinct deep learning model in form of filter coefficients. The ensemble learning based image classification system further contains a controller configured as a meta learner of the ensemble and a memory based data buffer for holding various data used in the ensemble by the controller and the CNN based ICs. Various data may include input imagery data to be classified. Various data may also include extracted feature vectors or image classification outputs out of the set of base learners. The extracted feature vectors or image classification outputs are then used by the meta learner to further perform the image classification task.
    Type: Grant
    Filed: July 3, 2019
    Date of Patent: November 19, 2019
    Assignee: Gyrfalcon Technology Inc.
    Inventors: Lin Yang, Patrick Z. Dong, Charles Jin Young, Jason Z. Dong, Michael Lin, Baohua Sun
  • Publication number: 20190318226
    Abstract: A deep learning image processing system contains at least first and second groups of cellular neural networks (CNN) based integrated circuits (ICs). The first group and the second group are operatively connected in parallel via a network bus. CNN based ICs within each of the first and second groups are operatively connected in series via the network bus. The first group is configured for performing convolutional operations in respective portions of a deep learning model for extracting features out of a first subsection of input data. The second group is configured for performing convolutional operations in respective portions of the deep learning model for extracting features out of a second subsection of the input data. The deep learning model is divided into a plurality of consecutive portions being handled by the respective CNN based ICs. The input data is partitioned into at least first and second subsections.
    Type: Application
    Filed: April 12, 2018
    Publication date: October 17, 2019
    Inventors: Lin Yang, Baohua Sun, Jason Z. Dong, Charles Jin Young
  • Patent number: 10387740
    Abstract: A deep learning object detection and recognition system contains a number of cellular neural networks (CNN) based integrated circuits (ICs) operatively coupling together via the network bus. The system is configured for detecting and then recognizing one or more objects out of a two-dimensional (2-D) imagery data. The 2-D imagery data is divided into N set of distinct sub-regions in accordance with respective N partition schemes. CNN based ICs are dynamically allocated for extracting features out of each sub-region for detecting and then recognizing an object potentially contained therein. Any two of the N sets of sub-regions overlap each other. N is a positive integer. Object detection is achieved with a two-category classification using a deep learning model based on approximated fully-connected layers, while object recognition is performed using a local database storing feature vectors of known objects.
    Type: Grant
    Filed: May 19, 2018
    Date of Patent: August 20, 2019
    Assignee: Gyrfalcon Technology Inc.
    Inventors: Lin Yang, Patrick Z. Dong, Charles Jin Young, Jason Z. Dong, Wenhan Zhang, Baohua Sun
  • Patent number: 10387772
    Abstract: An ensemble learning based image classification system contains multiple cellular neural networks (CNN) based integrated circuits (ICs) operatively coupling together as a set of base learners of an ensemble for an image classification task. Each CNN based IC is configured with at least one distinct deep learning model in form of filter coefficients. The ensemble learning based image classification system further contains a controller configured as a meta learner of the ensemble and a memory based data buffer for holding various data used in the ensemble by the controller and the CNN based ICs. Various data may include input imagery data to be classified. Various data may also include extracted feature vectors or image classification outputs out of the set of base learners. The extracted feature vectors or image classification outputs are then used by the meta learner to further perform the image classification task.
    Type: Grant
    Filed: October 22, 2018
    Date of Patent: August 20, 2019
    Assignee: Gyrfalcon Technology Inc.
    Inventors: Lin Yang, Patrick Z. Dong, Charles Jin Young, Jason Z. Dong, Michael Lin, Baohua Sun
  • Patent number: 10366328
    Abstract: Multiple 3×3 convolutional filter kernels are used for approximating operations of fully-connected (FC) layers. Image classification task is entirely performed within a CNN based integrated circuit. Output at the end of ordered convolutional layers contains P feature maps with F×F pixels of data per feature map. 3×3 filter kernels comprises L layers with each organized in an array of R×Q of 3×3 filter kernels, Q and R are respective numbers of input and output feature maps of a particular layer of the L layers. Each input feature map of the particular layer comprises F×F pixels of data with one-pixel padding added around its perimeter. Each output feature map of the particular layer comprises (F?2)×(F?2) pixels of useful data. Output of the last layer of the L layers contains Z classes. L equals to (F?1)/2 if F is an odd number. P, F, Q, R and Z are positive integers.
    Type: Grant
    Filed: March 14, 2018
    Date of Patent: July 30, 2019
    Assignee: Gyrfalcon Technology Inc.
    Inventors: Lin Yang, Patrick Z. Dong, Jason Z. Dong, Baohua Sun
  • Patent number: 10360470
    Abstract: Method and systems of replacing operations of depthwise separable filters with first and second replacement convolutional layers are disclosed. Depthwise separable filters contains a combination of a depthwise convolutional layer followed by a pointwise convolutional layer with input of P feature maps and output of Q feature maps. The first replacement convolutional layer contains P×P of 3×3 filter kernels formed by placing each of the P×1 of 3×3 filter kernels of the depthwise convolutional layer on respective P diagonal locations, and zero-value 3×3 filter kernels zero-value 3×3 filter kernels in all off-diagonal locations. The second replacement convolutional layer contains Q×P of 3×3 filter kernels formed by placing Q×P of 1×1 filter coefficients of the pointwise convolutional layer in center position of the respective Q×P of 3×3 filter kernels, and numerical value zero in eight perimeter positions.
    Type: Grant
    Filed: March 2, 2018
    Date of Patent: July 23, 2019
    Assignee: Gyrfalcon Technology Inc.
    Inventors: Lin Yang, Patrick Z. Dong, Jason Z. Dong, Baohua Sun
  • Patent number: 10331983
    Abstract: An artificial intelligence inference computing device contains a printed circuit board (PCB) and a number of electronic components mounted thereon. Electronic components include a wireless communication module, a controller module, a memory module, a storage module and at least one cellular neural networks (CNN) based integrated circuit (IC) configured for performing convolutional operations in a deep learning model for extracting features out of input data. Each CNN based IC includes a number of CNN processing engines operatively coupled to at least one input/output data bus. CNN processing engines are connected in a loop with a clock-skew circuit. Wireless communication module is configured for transmitting pre-trained filter coefficients of the deep learning model, input data and classification results.
    Type: Grant
    Filed: September 11, 2018
    Date of Patent: June 25, 2019
    Assignee: Gyrfalcon Technology Inc.
    Inventors: Lin Yang, Patrick Z. Dong, Charles Jin Young, Jason Z. Dong, Dan Bin Liu, Baohua Sun
  • Patent number: 10311149
    Abstract: Natural language translation device contains a bus, an input interface connecting to the bus for receiving a source sentence in a first natural language to be translated to a target sentence in second natural language one word at a time in sequential order. A two-dimensional (2-D) symbol containing a super-character characterizing the i-th word of the target sentence based on the received source sentence is formed in accordance with a set of 2-D symbol creation rules. The i-th word of the target sentence is obtained by classifying the 2-D symbol via a deep learning model that contains multiple ordered convolution layers in a Cellular Neural Networks or Cellular Nonlinear Networks (CNN) based integrated circuit.
    Type: Grant
    Filed: August 8, 2018
    Date of Patent: June 4, 2019
    Assignee: Gyrfalcon Technology Inc.
    Inventors: Lin Yang, Patrick Z. Dong, Catherine Chi, Charles Jin Young, Jason Z Dong, Baohua Sun
  • Publication number: 20190087725
    Abstract: Multiple 3×3 convolutional filter kernels are used for approximating operations of fully-connected (FC) layers. Image classification task is entirely performed within a CNN based integrated circuit. Output at the end of ordered convolutional layers contains P feature maps with F×F pixels of data per feature map. 3×3 filter kernels comprises L layers with each organized in an array of R×Q of 3×3 filter kernels, Q and R are respective numbers of input and output feature maps of a particular layer of the L layers. Each input feature map of the particular layer comprises F×F pixels of data with one-pixel padding added around its perimeter. Each output feature map of the particular layer comprises (F?2)×(F?2) pixels of useful data. Output of the last layer of the L layers contains Z classes. L equals to (F?1)/2 if F is an odd number. P, F, Q, R and Z are positive integers.
    Type: Application
    Filed: March 14, 2018
    Publication date: March 21, 2019
    Inventors: Lin Yang, Patrick Z. Dong, Jason Z. Dong, Baohua Sun
  • Patent number: 10192148
    Abstract: A string of Latin-alphabet based language texts is received and formed a multi-layer 2-D symbol in a computing system. The received string contains at least one word with each word containing at least one letter of the Latin-alphabet based language. 2-D symbol comprises a matrix of N×N pixels of data representing a super-character. The matrix is divided into M×M sub-matrices. Each sub-matrix represents one ideogram formed from the at least one letter contained in a corresponding word in the received string. Ideogram has a square format with a dimension EL letters by EL letters (i.e., row and column). EL is determined from the total number of letters (LL) contained in the corresponding word. EL, LL, N and M are positive integers. Super-character represents a meaning formed from a specific combination of at least one ideogram. Meaning of the super-character is learned with image classification of the 2-D symbol.
    Type: Grant
    Filed: September 18, 2018
    Date of Patent: January 29, 2019
    Assignee: Gyrfalcon Technology Inc.
    Inventors: Lin Yang, Patrick Z. Dong, Charles Jin Young, Jason Z. Dong, Baohua Sun
  • Publication number: 20180268234
    Abstract: A deep learning object detection and recognition system contains a number of cellular neural networks (CNN) based integrated circuits (ICs) operatively coupling together via the network bus. The system is configured for detecting and then recognizing one or more objects out of a two-dimensional (2-D) imagery data. The 2-D imagery data is divided into N set of distinct sub-regions in accordance with respective N partition schemes. CNN based ICs are dynamically allocated for extracting features out of each sub-region for detecting and then recognizing an object potentially contained therein. Any two of the N sets of sub-regions overlap each other. N is a positive integer. Object detection is achieved with a two-category classification using a deep learning model based on approximated fully-connected layers, while object recognition is performed using a local database storing feature vectors of known objects.
    Type: Application
    Filed: May 19, 2018
    Publication date: September 20, 2018
    Inventors: Lin Yang, Patrick Z. Dong, Charles Jin Young, Jason Z. Dong, Wenhan Zhang, Baohua Sun
  • Publication number: 20180189595
    Abstract: Method and systems of replacing operations of depthwise separable filters with first and second replacement convolutional layers are disclosed. Depthwise separable filters contains a combination of a depthwise convolutional layer followed by a pointwise convolutional layer with input of P feature maps and output of Q feature maps. The first replacement convolutional layer contains P×P of 3×3 filter kernels formed by placing each of the P×1 of 3×3 filter kernels of the depthwise convolutional layer on respective P diagonal locations, and zero-value 3×3 filter kernels zero-value 3×3 filter kernels in all off-diagonal locations. The second replacement convolutional layer contains Q×P of 3×3 filter kernels formed by placing Q×P of 1×1 filter coefficients of the pointwise convolutional layer in center position of the respective Q×P of 3×3 filter kernels, and numerical value zero in eight perimeter positions.
    Type: Application
    Filed: March 2, 2018
    Publication date: July 5, 2018
    Inventors: Lin Yang, Patrick Z. Dong, Jason Z. Dong, Baohua Sun