Patents by Inventor HAOZHI ZHANG

HAOZHI ZHANG 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: 11062180
    Abstract: Methods and systems for training machine vision models (MVMs) with “noisy” training datasets are described. A noisy set of images is received, where labels for some of the images are “noisy” and/or incorrect. A progressively-sequenced learning curriculum is designed for the noisy dataset, where the images that are easiest to learn machine-vision knowledge from are sequenced near the beginning of the curriculum and images that are harder to learn machine-vision knowledge from are sequenced later in the curriculum. An MVM is trained via providing the sequenced curriculum to a supervised learning method, so that the MVM learns from the easiest examples first and the harder training examples later, i.e., the MVM progressively accumulates knowledge from simplest to most complex. To sequence the curriculum, the training images are embedded in a feature space and the “complexity” of each image is determined via density distributions and clusters in the feature space.
    Type: Grant
    Filed: July 18, 2018
    Date of Patent: July 13, 2021
    Assignee: Shenzhen Malong Technologies Co., Ltd.
    Inventors: Sheng Guo, Weilin Huang, Haozhi Zhang, Chenfan Zhuang, Dengke Dong, Matthew R. Scott, Dinglong Huang
  • Publication number: 20210182686
    Abstract: This disclosure includes computer vision technologies, specifically for embeddings and metric learning. In various practical applications, such as product recognition, image retrieval, face recognition, etc., the disclosed technologies use a cross-batch memory mechanism to memorize prior embeddings, so that a pair-based learning model can mine more pairs across multiple mini-batches or even over the whole dataset. The disclosed technologies not only boost the performance for various applications, but considerably improve the computation itself with its memory-efficient approach.
    Type: Application
    Filed: June 24, 2020
    Publication date: June 17, 2021
    Inventors: Xun WANG, Haozhi ZHANG, Weilin HUANG, Matthew Robert SCOTT
  • Publication number: 20210125001
    Abstract: Methods and systems for training machine vision models (MVMs) with “noisy” training datasets are described. A noisy set of images is received, where labels for some of the images are “noisy” and/or incorrect. A progressively-sequenced learning curriculum is designed for the noisy dataset, where the images that are easiest to learn machine-vision knowledge from are sequenced near the beginning of the curriculum and images that are harder to learn machine-vision knowledge from are sequenced later in the curriculum. An MVM is trained via providing the sequenced curriculum to a supervised learning method, so that the MVM learns from the easiest examples first and the harder training examples later, i.e., the MVM progressively accumulates knowledge from simplest to most complex. To sequence the curriculum, the training images are embedded in a feature space and the “complexity” of each image is determined via density distributions and clusters in the feature space.
    Type: Application
    Filed: July 18, 2018
    Publication date: April 29, 2021
    Inventors: Sheng Guo, Weilin Huang, Haozhi Zhang, Chenfan Zhuang, Dengke Dong, Matthew R. Scott, Dinlong Huang
  • Publication number: 20210117949
    Abstract: Aspects of this disclosure include technologies for detecting irregular scans, specifically when a retail system fails to collect the genuine information of a product. The disclosed retail system retrieves images covering a specific region, e.g., the designated scanning area. Further the disclosed retail system uses neural networks to detect the product from such images and track a moving path of the product over the specific region. Irregular scans may be detected when the tracked product in the images does not match what is collected by the scanner of the retail system.
    Type: Application
    Filed: December 5, 2019
    Publication date: April 22, 2021
    Inventors: Sheng GUO, Haozhi ZHANG, Xun WANG, Weilin HUANG, Matthew Robert SCOTT
  • Publication number: 20210049400
    Abstract: Aspects of this disclosure include technologies for detecting mislabeled products. In one embodiment, the disclosed system will capture an image of a product when the MRL of the product is scanned or being scanned. After recognizing the product in the image, the size of the area containing the product may be calculated. Subsequently, the disclosed system can determine whether the MRL mismatches the product in the image if this size of the area containing the product does not match the standard size associated with the MRL.
    Type: Application
    Filed: November 2, 2020
    Publication date: February 18, 2021
    Inventors: MATTHEW ROBERT SCOTT, DINGLONG HUANG, LE YIN, SHENG GUO, HAOZHI ZHANG, WEILIN HUANG
  • Patent number: 10839452
    Abstract: Aspects of this disclosure include technologies to detect unpackaged, unlabeled, or mislabeled products based on product images. Leveraging from improved machine learning techniques, the disclosed technical solution can reduce a full product space for product search to a partial product space. Accordingly, a limited number of product candidates in the partial product space may be visually presented for user evaluation. Sometimes, a product candidate is to be comparatively presented with a live image of the product via a uniquely designed graphic user interface, which further improves the confidence of the user and the accuracy of the underlying transaction.
    Type: Grant
    Filed: June 27, 2019
    Date of Patent: November 17, 2020
    Inventors: Sheng Guo, Haozhi Zhang, Weilin Huang, Tiangang Zhang, Yu Gao, Le Yin, Matthew Robert Scott
  • Publication number: 20200357045
    Abstract: Aspects of this disclosure include technologies to detect unpackaged, unlabeled, or mislabeled products based on product images. Leveraging from improved machine learning techniques, the disclosed technical solution can reduce a full product space for product search to a partial product space. Accordingly, a limited number of product candidates in the partial product space may be visually presented for user evaluation. Sometimes, a product candidate is to be comparatively presented with a live image of the product via a uniquely designed graphic user interface, which further improves the confidence of the user and the accuracy of the underlying transaction.
    Type: Application
    Filed: June 27, 2019
    Publication date: November 12, 2020
    Inventors: SHENG GUO, HAOZHI ZHANG, WEILIN HUANG, TIANGANG ZHANG, YU GAO, LE YIN, MATTHEW ROBERT SCOTT
  • Patent number: 10824902
    Abstract: Aspects of this disclosure include technologies for detecting mislabeled products. In one embodiment, the disclosed system will capture an image of a product when the MRL of the product is scanned or being scanned. After recognizing the product in the image, the size of the area containing the product may be calculated. Subsequently, the disclosed system can determine whether the MRL mismatches the product in the image if this size of the area containing the product does not match the standard size associated with the MRL.
    Type: Grant
    Filed: May 24, 2019
    Date of Patent: November 3, 2020
    Inventors: Matthew Robert Scott, Dinglong Huang, Le Yin, Sheng Guo, Haozhi Zhang, Weilin Huang
  • Publication number: 20200242392
    Abstract: Aspects of this disclosure include technologies for detecting mislabeled products. In one embodiment, the disclosed system will capture an image of a product when the MRL of the product is scanned or being scanned. After recognizing the product in the image, the size of the area containing the product may be calculated. Subsequently, the disclosed system can determine whether the MRL mismatches the product in the image if this size of the area containing the product does not match the standard size associated with the MRL.
    Type: Application
    Filed: May 24, 2019
    Publication date: July 30, 2020
    Inventors: MATTHEW ROBERT SCOTT, DINGLONG HUANG, LE YIN, TONG JIN, SHENG GUO, HAOZHI ZHANG, WEILIN HUANG