Patents by Inventor Hyeonseob NAM

Hyeonseob NAM 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: 12217425
    Abstract: A method for interpreting an input image by a computing device operated by at least one processor is provided. The method for interpreting an input image comprises storing an artificial intelligent (AI) model that is trained to classify a lesion detected in the input image as suspicious or non-suspicious and, under a condition of being suspicious, to classify the lesion detected in the input image as malignant or benign-hard representing that the lesion is suspicious but determined to be benign, receiving an analysis target image, by using the AI model, obtaining a classification class of a target lesion detected in the analysis target image and, when the classification class is the suspicious, obtaining at least one of a probability of being suspicious, a probability of being benign-hard, and a probability of malignant for the target lesion, and outputting an interpretation result including at least one probability obtained for the target lesion.
    Type: Grant
    Filed: February 22, 2024
    Date of Patent: February 4, 2025
    Assignee: LUNIT INC.
    Inventors: Hyo-Eun Kim, Hyeonseob Nam
  • Publication number: 20240233948
    Abstract: A prediction device operated by at least one processor includes: a risk factor inference model implemented with an artificial intelligence model trained to infer risk factors for a disease from input images, configured to receive medical images and output at least one inferred risk factor; and a medical prediction model configured to receive patient information including the at least one inferred risk factor as input and output a medical prediction including a disease risk.
    Type: Application
    Filed: March 30, 2022
    Publication date: July 11, 2024
    Inventors: Hyeonsoo LEE, Kihwan KIM, Hyeonseob NAM
  • Publication number: 20240193774
    Abstract: A method for interpreting an input image by a computing device operated by at least one processor is provided. The method for interpreting an input image comprises storing an artificial intelligent (AI) model that is trained to classify a lesion detected in the input image as suspicious or non-suspicious and, under a condition of being suspicious, to classify the lesion detected in the input image as malignant or benign-hard representing that the lesion is suspicious but determined to be benign, receiving an analysis target image, by using the AI model, obtaining a classification class of a target lesion detected in the analysis target image and, when the classification class is the suspicious, obtaining at least one of a probability of being suspicious, a probability of being benign-hard, and a probability of malignant for the target lesion, and outputting an interpretation result including at least one probability obtained for the target lesion.
    Type: Application
    Filed: February 22, 2024
    Publication date: June 13, 2024
    Inventors: Hyo-Eun KIM, Hyeonseob NAM
  • Publication number: 20240136068
    Abstract: A prediction device operated by at least one processor includes: a risk factor inference model implemented with an artificial intelligence model trained to infer risk factors for a disease from input images, configured to receive medical images and output at least one inferred risk factor; and a medical prediction model configured to receive patient information including the at least one inferred risk factor as input and output a medical prediction including a disease risk.
    Type: Application
    Filed: March 29, 2022
    Publication date: April 25, 2024
    Inventors: Hyeonsoo LEE, Kihwan KIM, Hyeonseob NAM
  • Patent number: 11935237
    Abstract: A method for interpreting an input image by a computing device operated by at least one processor is provided. The method for interpreting an input image comprises storing an artificial intelligent (AI) model that is trained to classify a lesion detected in the input image as suspicious or non-suspicious and, under a condition of being suspicious, to classify the lesion detected in the input image as malignant or benign-hard representing that the lesion is suspicious but determined to be benign, receiving an analysis target image, by using the AI model, obtaining a classification class of a target lesion detected in the analysis target image and, when the classification class is the suspicious, obtaining at least one of a probability of being suspicious, a probability of being benign-hard, and a probability of malignant for the target lesion, and outputting an interpretation result including at least one probability obtained for the target lesion.
    Type: Grant
    Filed: March 30, 2023
    Date of Patent: March 19, 2024
    Assignee: LUNIT INC.
    Inventors: Hyo-Eun Kim, Hyeonseob Nam
  • Publication number: 20240071621
    Abstract: A method for predicting a risk of occurrence of a lesion is provided, which is performed by one or more processors and includes acquiring a medical image of a subject, using a machine learning model, predicting a possibility of occurrence of a lesion of the subject from acquired medical image, and outputting a prediction result, in which the machine learning model may be a model trained with a plurality of training medical images and a risk of occurrence of the lesion associated with each training medical image.
    Type: Application
    Filed: February 9, 2022
    Publication date: February 29, 2024
    Applicant: Lunit Inc.
    Inventors: Ki Hwan KIM, Hyeonseob NAM
  • Publication number: 20230252626
    Abstract: A method for interpreting an input image by a computing device operated by at least one processor is provided. The method for interpreting an input image comprises storing an artificial intelligent (AI) model that is trained to classify a lesion detected in the input image as suspicious or non-suspicious and, under a condition of being suspicious, to classify the lesion detected in the input image as malignant or benign-hard representing that the lesion is suspicious but determined to be benign, receiving an analysis target image, by using the AI model, obtaining a classification class of a target lesion detected in the analysis target image and, when the classification class is the suspicious, obtaining at least one of a probability of being suspicious, a probability of being benign-hard, and a probability of malignant for the target lesion, and outputting an interpretation result including at least one probability obtained for the target lesion.
    Type: Application
    Filed: March 30, 2023
    Publication date: August 10, 2023
    Inventors: Hyo-Eun KIM, Hyeonseob Nam
  • Patent number: 11663718
    Abstract: A method for interpreting an input image by a computing device operated by at least one processor is provided. The method for interpreting an input image comprises storing an artificial intelligent (AI) model that is trained to classify a lesion detected in the input image as suspicious or non-suspicious and, under a condition of being suspicious, to classify the lesion detected in the input image as malignant or benign-hard representing that the lesion is suspicious but determined to be benign, receiving an analysis target image, by using the AI model, obtaining a classification class of a target lesion detected in the analysis target image and, when the classification class is the suspicious, obtaining at least one of a probability of being suspicious, a probability of being benign-hard, and a probability of malignant for the target lesion, and outputting an interpretation result including at least one probability obtained for the target lesion.
    Type: Grant
    Filed: April 15, 2022
    Date of Patent: May 30, 2023
    Assignee: LUNIT INC.
    Inventors: Hyo-Eun Kim, Hyeonseob Nam
  • Publication number: 20220237793
    Abstract: A method for interpreting an input image by a computing device operated by at least one processor is provided. The method for interpreting an input image comprises storing an artificial intelligent (AI) model that is trained to classify a lesion detected in the input image as suspicious or non-suspicious and, under a condition of being suspicious, to classify the lesion detected in the input image as malignant or benign-hard representing that the lesion is suspicious but determined to be benign, receiving an analysis target image, by using the AI model, obtaining a classification class of a target lesion detected in the analysis target image and, when the classification class is the suspicious, obtaining at least one of a probability of being suspicious, a probability of being benign-hard, and a probability of malignant for the target lesion, and outputting an interpretation result including at least one probability obtained for the target lesion.
    Type: Application
    Filed: April 15, 2022
    Publication date: July 28, 2022
    Inventors: Hyo-Eun KIM, Hyeonseob Nam
  • Patent number: 11334994
    Abstract: A method for interpreting an input image by a computing device operated by at least one processor is provided. The method for interpreting an input image comprises storing an artificial intelligent (AI) model that is trained to classify a lesion detected in the input image as suspicious or non-suspicious and, under a condition of being suspicious, to classify the lesion detected in the input image as malignant or benign-hard representing that the lesion is suspicious but determined to be benign, receiving an analysis target image, by using the AI model, obtaining a classification class of a target lesion detected in the analysis target image and, when the classification class is the suspicious, obtaining at least one of a probability of being suspicious, a probability of being benign-hard, and a probability of malignant for the target lesion, and outputting an interpretation result including at least one probability obtained for the target lesion.
    Type: Grant
    Filed: May 15, 2020
    Date of Patent: May 17, 2022
    Assignee: LUNIT INC.
    Inventors: Hyo-Eun Kim, Hyeonseob Nam
  • Patent number: 11055854
    Abstract: The invention disclosed here relates to a method and system for real-time target tracking based on deep learning. The method for real-time target tracking according to an embodiment is performed by a computing device including a processor, and includes pre-training a target tracking model for detecting a tracking target from an image using pre-inputted training data, receiving an image with a plurality of frames, and detecting the tracking target for each of the plurality of frames by applying the target tracking model to the image. According to an embodiment, there is a remarkable reduction in the time required to detect the target from the image, thereby allowing real-time visual tracking, and improvement of the hierarchical structure and introduction of a new loss function make it possible to achieve more precise localization and distinguish different targets of similar shapes.
    Type: Grant
    Filed: August 22, 2019
    Date of Patent: July 6, 2021
    Assignee: SEOUL NATIONAL UNIVERSITY R&DB FOUNDATION
    Inventors: Bohyung Han, Ilchae Jung, Hyeonseob Nam
  • Publication number: 20210125059
    Abstract: Provided is a method for training a neural network and a device thereof. The method may train a neural network including first and second layers in a computing device. The method may include acquiring, at a processor of the computing device, a layer output of the first layer for training data and extracting, at the processor, statistics information of the layer output. The method may also include normalizing, at the processor, the layer output through the statistics information to generate a normalized output and augmenting, at the processor, the statistics information to generate augmented statistics information associated with the statistics information. The method may further include performing, at the processor, an affine transform on the normalized output using the augmented statistics information to generate a transformed output and providing, at the processor, the transformed output as an input to the second layer.
    Type: Application
    Filed: April 7, 2020
    Publication date: April 29, 2021
    Inventors: HyunJae LEE, Hyeonseob NAM
  • Publication number: 20200372641
    Abstract: A method for interpreting an input image by a computing device operated by at least one processor is provided. The method for interpreting an input image comprises storing an artificial intelligent (AI) model that is trained to classify a lesion detected in the input image as suspicious or non-suspicious and, under a condition of being suspicious, to classify the lesion detected in the input image as malignant or benign-hard representing that the lesion is suspicious but determined to be benign, receiving an analysis target image, by using the AI model, obtaining a classification class of a target lesion detected in the analysis target image and, when the classification class is the suspicious, obtaining at least one of a probability of being suspicious, a probability of being benign-hard, and a probability of malignant for the target lesion, and outputting an interpretation result including at least one probability obtained for the target lesion.
    Type: Application
    Filed: May 15, 2020
    Publication date: November 26, 2020
    Inventors: Hyo-Eun KIM, Hyeonseob NAM
  • Publication number: 20200065976
    Abstract: The invention disclosed here relates to a method and system for real-time target tracking based on deep learning. The method for real-time target tracking according to an embodiment is performed by a computing device including a processor, and includes pre-training a target tracking model for detecting a tracking target from an image using pre-inputted training data, receiving an image with a plurality of frames, and detecting the tracking target for each of the plurality of frames by applying the target tracking model to the image. According to an embodiment, there is a remarkable reduction in the time required to detect the target from the image, thereby allowing real-time visual tracking, and improvement of the hierarchical structure and introduction of a new loss function make it possible to achieve more precise localization and distinguish different targets of similar shapes.
    Type: Application
    Filed: August 22, 2019
    Publication date: February 27, 2020
    Inventors: Bohyung HAN, Ilchae JUNG, Hyeonseob NAM