Patents by Inventor Shantanu PATEL

Shantanu PATEL 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: 12039509
    Abstract: Disclosed is a method of predicting shopping events. The method includes obtaining a first set of events from a sensor and a second set of events from a camera, wherein the camera captures one or more users in front of a shelf unit; determining whether a first timestamp from the obtained first set of events and a second timestamp from the obtained second set of events are within a same time interval; determining whether a first bin number matches a second bin number based on a determination that the first timestamp and the second timestamp are within the same time interval; and generating a shopping event for a user based on a determination that the first bin number matches the second bin number, wherein the user is associated with at least one of the obtained first set of events and the second set of events.
    Type: Grant
    Filed: August 31, 2021
    Date of Patent: July 16, 2024
    Assignee: LG ELECTRONICS INC.
    Inventors: Jung Ick Guack, Baisub Lee, Bhooshan Supe, Shantanu Patel, Gaurav Saraf, Helder Silva, Julie Huynh, Jaigak Song, Amir Hossein Khalili
  • Patent number: 11966901
    Abstract: Disclosed is a method for identifying and monitoring a shopping behavior in a user. The method includes capturing images from a depth camera mounted on a shelf unit, identifying a user from the captured image, identifying joints of the identified user by performing a deep neural network (DNN) body joint detection on the captured images; detecting and tracking actions of the identified user over a first time period; tracking an object from the bins over a second time period by associating the object with one or more joints among the identified joints that have entered the bins within the shelf unit, and determining an action of the identified user based at least in part on the associated object with the one or more joints and results from the deep learning identification on the bounding box.
    Type: Grant
    Filed: August 31, 2021
    Date of Patent: April 23, 2024
    Assignee: LG ELECTRONICS INC.
    Inventors: Amir Hossein Khalili, Bhooshan Supe, Jung Ick Guack, Shantanu Patel, Gaurav Saraf, Baisub Lee, Helder Silva, Julie Huynh, Jaigak Song
  • Publication number: 20230060506
    Abstract: Present disclosure provides a method and system for package movement visibility in warehouse operations. The method includes identifying, by the package management system (1000), an object entering AOE and moving in a predetermined direction and recording, by the package management system (1000), image frame of the object. The method also includes determining, by the package management system (1000), that the object in the image frame is a package and determining, by the package management system (1000), a label on the package from the image frame. Further, the method also includes determining, by the package management system (1000), a match to the label in a cloud platform (400) and sending, by the package management system (1000), tracking details associated with the package based on the match to the label in the cloud platform (400), to a client device in real-time.
    Type: Application
    Filed: August 25, 2022
    Publication date: March 2, 2023
    Applicant: Hopstack Inc.
    Inventors: Megha Ghosh, Roshan Rajendra Maind, Shantanu Patel, Giridhar Sampathkumar, Vivek Singh, Gaurav Saraf, Vicky Danny Rudy Jeannine Froyen, Siddharth Agarwal
  • Publication number: 20220067688
    Abstract: Disclosed is a method for training a device using machine learning. The method includes obtaining a sensor weight data stream and an environment sensor data stream; determining a new weight value by multiplying a weight measurement among the obtained sensor weight data stream with an environment calibrating coefficient, wherein the environment calibrating coefficient is obtained from using an environment measurement and a pre-recorded calibration file; determining whether a detected change in weight from the device exceeds a predetermined value; and based on a determination that the detected change in weight exceeds the predetermined value, determining a difference in value using the determined new weight value, and identify an item based on inputting the determined difference in value into a machine learning model, wherein the machine learning model is trained to learn unit weights of a particular item to determine an identity of the particular item.
    Type: Application
    Filed: August 31, 2021
    Publication date: March 3, 2022
    Applicant: LG ELECTRONICS INC.
    Inventors: Shantanu PATEL, Jung Ick Guack, Gaurav Saraf, Baisub Lee, Helder Silva, Julie Huynh, Jaigak Song, Bhooshan Supe, Amir Hossein Khalili
  • Publication number: 20220067689
    Abstract: Disclosed is a method of predicting shopping events. The method includes obtaining a first set of events from a sensor and a second set of events from a camera, wherein the camera captures one or more users in front of a shelf unit; determining whether a first timestamp from the obtained first set of events and a second timestamp from the obtained second set of events are within a same time interval; determining whether a first bin number matches a second bin number based on a determination that the first timestamp and the second timestamp are within the same time interval; and generating a shopping event for a user based on a determination that the first bin number matches the second bin number, wherein the user is associated with at least one of the obtained first set of events and the second set of events.
    Type: Application
    Filed: August 31, 2021
    Publication date: March 3, 2022
    Inventors: Jung Ick GUACK, Baisub Lee, Bhooshan Supe, Shantanu Patel, Gaurav Saraf, Helder Silva, Julie Huynh, Jaigak Song, Amir Hossein Khalili
  • Publication number: 20220067390
    Abstract: Disclosed is a method for identifying and monitoring a shopping behavior in a user. The method includes capturing images from a depth camera mounted on a shelf unit, identifying a user from the captured image, identifying joints of the identified user by performing a deep neural network (DNN) body joint detection on the captured images; detecting and tracking actions of the identified user over a first time period; tracking an object from the bins over a second time period by associating the object with one or more joints among the identified joints that have entered the bins within the shelf unit, and determining an action of the identified user based at least in part on the associated object with the one or more joints and results from the deep learning identification on the bounding box.
    Type: Application
    Filed: August 31, 2021
    Publication date: March 3, 2022
    Applicant: LG ELECTRONICS INC.
    Inventors: Amir Hossein KHALILI, Bhooshan SUPE, Jung Ick GUACK, Shantanu PATEL, Gaurav SARAF, Baisub LEE, Helder SILVA, Julie HUYNH, Jaigak SONG