Patents by Inventor Cheng CUI

Cheng CUI 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: 20240174632
    Abstract: Disclosed are small molecule antagonists of human ?4?7 integrin, and methods of using them to treat a number of diseases and conditions.
    Type: Application
    Filed: October 16, 2020
    Publication date: May 30, 2024
    Applicant: Morphic Therapeutic, Inc.
    Inventors: Matthew G. BURSAVICH, Dan CUI, James E. DOWLING, Kristopher N. HAHN, Bryce A. HARRISON, Fu-Yang LIN, Blaise S. LIPPA, Bruce N. ROGERS, Dawn M. TROAST, Cheng ZHONG, Kyle D. KONZE, Aleksey I. GERASYUTO, Byungchan KIM, Salma RAFI, Tyler DAY, Eugene HICKEY, Evelyne HOUANG, Robert ZAHLER
  • Publication number: 20240160925
    Abstract: There are provided method, apparatus, device, and medium for determining update gradient for contrastive learning model. In the method, a gradient factor of a first type for the contrastive learning model is determined based on a first group of training data and a second group of training data for training the contrastive learning model. The gradient factor of the first type is not used for backpropagation during a training process. In a first stage of the training process, a gradient factor of a second type associated with the first group of training data is determined based on the contrastive learning model. The gradient factor of the second type is used for backpropagation during the training process. Gradient is obtained for updating the contrastive learning model based on the gradient factor of the first type and the gradient factor of the second type associated with the first group of training data.
    Type: Application
    Filed: September 22, 2023
    Publication date: May 16, 2024
    Inventors: Hao Wu, Yu Guo, Quan Cui, Boyan Zhou, Cheng Yang
  • Publication number: 20240152760
    Abstract: A method of training and applying contrastive learning model. The method includes obtaining a sample set and label information for training contrastive learning model, the sample set including a plurality of first samples of a first modality and a plurality of second samples of a second modality, the label information indicating a correlation between samples of the plurality of first samples and samples of the plurality of second samples; determining whether sample mixing is to be performed on the first modality or the second modality; in accordance with a determination that sample mixing is to be performed on the first modality, generating at least one first mixed sample of the first modality by mixing at least one pair of first samples among the plurality of first samples; and training the contrastive learning model at least based on the at least one first mixed sample and first mixed label information.
    Type: Application
    Filed: September 22, 2023
    Publication date: May 9, 2024
    Inventors: Hao Wu, Quan Cui, Boyan Zhou, Cheng Yang
  • Publication number: 20240144007
    Abstract: A method of contrastive learning comprises: determining, based on a model construction criterion, a first encoder for a first modality and a second encoder for a second modality; constructing a first contrastive learning model, the first contrastive learning model comprising the first encoder and a third encoder for the second modality, and a model capacity of the third encoder being greater than a model capacity of the second encoder; performing pre-training of the first contrastive learning model based on a first training dataset for the first modality and the second modality; and providing the pre-trained first encoder in the pre-trained first contrastive learning model for a downstream task. Because only the model capacity of one encoder is increased in the pre-training stage, model performance may be improved without increasing model training overhead during downstream task fine-tuning and model running overhead during model application.
    Type: Application
    Filed: September 22, 2023
    Publication date: May 2, 2024
    Inventors: Hao Wu, Boyan Zhou, Quan Cui, Cheng Yang
  • Publication number: 20240144100
    Abstract: Methods, apparatuses, a device, and a medium for training a contrastive learning model are provided. In a method, a plurality of sample sets for training the contrastive learning model are obtained, and the plurality of sample sets comprises a first sample set and a second sample set. A first target sample set is selected from the first sample set and the second sample set according to a predetermined rule. A first set of samples are determined based on the first target sample set according to a predefined batch size. The contrastive learning model is trained using the first set of samples. In this way, on the one hand, performance degradation of the contrastive learning model due to sample set bias may be avoided; on the other hand, a forgetting problem in the training process may be alleviated.
    Type: Application
    Filed: October 27, 2023
    Publication date: May 2, 2024
    Inventors: Hao Wu, Boyan Zhou, Quan Cui, Cheng Yang
  • Publication number: 20240107613
    Abstract: Disclosed are methods, systems, and computer-readable medium to perform operations including: determining that a user equipment (UE) is connected to a cell of a network using a connection in a standalone (SA) mode; based on determining a bandwidth part (BWP) of the connection, accessing a physical cell identifier (PCI) list associated with the UE for a time period; based on the number of PCI values in the list and a duration of the time period, assigning, to a BWP switch timer, a timeout value; initiating the BWP switch timer; and in response to determining that the handover of the UE to the different cell of the network occurs prior to the BWP switch timer reaching the timeout value, causing the UE to switch to a LTE mode.
    Type: Application
    Filed: September 22, 2023
    Publication date: March 28, 2024
    Inventors: Bingyin Cui, Cheng Li, Han Pu, Lele Cui, Muthukumaran Dhanapal
  • Patent number: 11929871
    Abstract: The present disclosure provides a method for generating a backbone network, an apparatus for generating a backbone network, a device, and a storage medium. The method includes: acquiring a set of a training image, a set of an inference image, and a set of an initial backbone network; training and inferring, for each initial backbone network in the set of the initial backbone network, the initial backbone network by using the set of the training image and the set of the inference image, to obtain an inference time and an inference accuracy of a trained backbone network in an inference process; determining a basic backbone network based on the inference time and the inference accuracy of the trained backbone network in the inference process; and obtaining a target backbone network based on the basic backbone network and a preset target network.
    Type: Grant
    Filed: April 11, 2022
    Date of Patent: March 12, 2024
    Inventors: Cheng Cui, Tingquan Gao, Shengyu Wei, Yuning Du, Ruoyu Guo, Bin Lu, Ying Zhou, Xueying Lyu, Qiwen Liu, Xiaoguang Hu, Dianhai Yu, Yanjun Ma
  • Publication number: 20230215148
    Abstract: The present disclosure provides a method for training a feature extraction model, a method for classifying an image and related apparatuses, and relates to the field of artificial intelligence technology such as deep learning and image recognition. The scheme comprises: extracting an image feature of each sample image in a sample image set using a basic feature extraction module of an initial feature extraction model, to obtain an initial feature vector set; performing normalization processing on each initial feature vector in the initial feature vector set using a normalization processing module of the initial feature extraction model, to obtain each normalized feature vector; and guiding training for the initial feature extraction model through a preset high discriminative loss function, to obtain a target feature extraction model as a training result.
    Type: Application
    Filed: March 14, 2023
    Publication date: July 6, 2023
    Inventors: Shuilong DONG, Sensen HE, Shengyu WEI, Cheng CUI, Yuning DU, Tingquan GAO, Shao ZENG, Ying ZHOU, Xueying LYU, Yi LIU, Qiao ZHAO, Qiwen LIU, Ran BI, Xiaoguang HU, Dianhai YU, Yanjun MA
  • Patent number: 11610396
    Abstract: The present disclosure provides a logo picture processing method, apparatus, device and medium, and relates to technical field of image processing, and specifically to the technical field of artificial intelligence such as deep learning and computer vision. The logo picture processing method includes: obtaining a logo picture including: a current logo graph and current text information; performing text recognition on the logo picture to obtain the current text information; searching for a picture that matches both the current logo graph and the current text information, to obtain a matched picture. The present disclosure may improve the accuracy of the matched picture of the logo picture and thereby improve the logo picture recognition accuracy.
    Type: Grant
    Filed: July 14, 2021
    Date of Patent: March 21, 2023
    Assignee: BEIJING BAIDU NETCOM SCIENCE AND TECHNOLOGY CO., LTD.
    Inventors: Cheng Cui, Kai Wei, Min Yang
  • Publication number: 20220247626
    Abstract: The present disclosure provides a method for generating a backbone network, an apparatus for generating a backbone network, a device, and a storage medium. The method includes: acquiring a set of a training image, a set of an inference image, and a set of an initial backbone network; training and inferring, for each initial backbone network in the set of the initial backbone network, the initial backbone network by using the set of the training image and the set of the inference image, to obtain an inference time and an inference accuracy of a trained backbone network in an inference process; determining a basic backbone network based on the inference time and the inference accuracy of the trained backbone network in the inference process; and obtaining a target backbone network based on the basic backbone network and a preset target network.
    Type: Application
    Filed: April 11, 2022
    Publication date: August 4, 2022
    Inventors: Cheng CUI, Tingquan GAO, Shengyu WEI, Yuning DU, Ruoyu GUO, Bin LU, Ying ZHOU, Xueying LYU, Qiwen LIU, Xiaoguang HU, Dianhai YU, Yanjun MA
  • Publication number: 20220207286
    Abstract: The present disclosure provides a logo picture processing method, apparatus, device and medium, and relates to technical field of image processing, and specifically to the technical field of artificial intelligence such as deep learning and computer vision. The logo picture processing method includes: obtaining a logo picture including: a current logo graph and current text information; performing text recognition on the logo picture to obtain the current text information; searching for a picture that matches both the current logo graph and the current text information, to obtain a matched picture. The present disclosure may improve the accuracy of the matched picture of the logo picture and thereby improve the logo picture recognition accuracy.
    Type: Application
    Filed: July 14, 2021
    Publication date: June 30, 2022
    Applicant: BEIJING BAIDU NETCOM SCIENCE AND TECHNOLOGY CO., LTD.
    Inventors: Cheng CUI, Kai WEI, Min YANG
  • Publication number: 20140193599
    Abstract: A kind of light-heat dual curing anisotropic conductive adhesive includes light curing activated monomer 15.0-18.0%, light-cured resin 4.5-12.5%, thermosetting resin 20.0-25.0%, elastomer 5.0-10.0%, insulating nanoparticles 8.0-15.0%, conductive particles 4.0-18.0%, light curing agent 3.0-5.0% and latent heat curing agent 12.0-16.0%, wherein the components are counted according to weight percentage. The present invention also discloses a kind of light-heat dual curing anisotropic conductive film (ACF) and its preparation methods. Ultraviolet light curing method is applied to produce ACF can avoid using solvent to protect the natural environment. When using ACF, heat curing method is then applied to guarantee the quality of banding and the reliability.
    Type: Application
    Filed: April 24, 2013
    Publication date: July 10, 2014
    Inventors: Ren-Liang Xiao, Chang-Hou Zhao, Cheng-Cui Liu, Xian-Fei Wan, Chang-Wu Yang, Hua-Guo Yin