Patents by Inventor Kushagra Srivastava

Kushagra Srivastava 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: 11922728
    Abstract: Where an event is determined to have occurred at a location within a vicinity of a plurality of actors, imaging data captured using cameras having the location is processed using one or more machine learning systems or techniques operating on the cameras to determine which of the actors is most likely associated with the event. For each relevant pixel of each image captured by a camera, the camera returns a set of vectors extending to pixels of body parts of actors who are most likely to have been involved with an event occurring at the relevant pixel, along with a measure of confidence in the respective vectors. A server receives the vectors from the cameras, determines which of the images depicted the event in a favorable view, based at least in part on the quality of such images, and selects one of the actors as associated with the event accordingly.
    Type: Grant
    Filed: October 24, 2022
    Date of Patent: March 5, 2024
    Assignee: Amazon Technologies, Inc.
    Inventors: Jaechul Kim, Nishitkumar Ashokkumar Desai, Jayakrishnan Kumar Eledath, Kartik Muktinutalapati, Shaonan Zhang, Hoi Cheung Pang, Dilip Kumar, Kushagra Srivastava, Gerard Guy Medioni, Daniel Bibireata
  • Patent number: 11482045
    Abstract: Where an event is determined to have occurred at a location within a vicinity of a plurality of actors, imaging data captured using cameras having the location is processed using one or more machine learning systems or techniques operating on the cameras to determine which of the actors is most likely associated with the event. For each relevant pixel of each image captured by a camera, the camera returns a set of vectors extending to pixels of body parts of actors who are most likely to have been involved with an event occurring at the relevant pixel, along with a measure of confidence in the respective vectors. A server receives the vectors from the cameras, determines which of the images depicted the event in a favorable view, based at least in part on the quality of such images, and selects one of the actors as associated with the event accordingly.
    Type: Grant
    Filed: February 24, 2020
    Date of Patent: October 25, 2022
    Assignee: Amazon Technologies, Inc.
    Inventors: Jaechul Kim, Nishitkumar Ashokkumar Desai, Jayakrishnan Kumar Eledath, Kartik Muktinutalapati, Shaonan Zhang, Hoi Cheung Pang, Dilip Kumar, Kushagra Srivastava, Gerard Guy Medioni, Daniel Bibireata
  • Patent number: 11468698
    Abstract: Where an event is determined to have occurred at a location within a vicinity of a plurality of actors, imaging data captured using cameras having the location is processed using one or more machine learning systems or techniques operating on the cameras to determine which of the actors is most likely associated with the event. For each relevant pixel of each image captured by a camera, the camera returns a set of vectors extending to pixels of body parts of actors who are most likely to have been involved with an event occurring at the relevant pixel, along with a measure of confidence in the respective vectors. A server receives the vectors from the cameras, determines which of the images depicted the event in a favorable view, based at least in part on the quality of such images, and selects one of the actors as associated with the event accordingly.
    Type: Grant
    Filed: December 12, 2019
    Date of Patent: October 11, 2022
    Assignee: Amazon Technologies, Inc.
    Inventors: Jaechul Kim, Nishitkumar Ashokkumar Desai, Jayakrishnan Kumar Eledath, Kartik Muktinutalapati, Shaonan Zhang, Hoi Cheung Pang, Dilip Kumar, Kushagra Srivastava, Gerard Guy Medioni, Daniel Bibireata
  • Patent number: 11468681
    Abstract: Where an event is determined to have occurred at a location within a vicinity of a plurality of actors, imaging data captured using cameras having the location is processed using one or more machine learning systems or techniques operating on the cameras to determine which of the actors is most likely associated with the event. For each relevant pixel of each image captured by a camera, the camera returns a set of vectors extending to pixels of body parts of actors who are most likely to have been involved with an event occurring at the relevant pixel, along with a measure of confidence in the respective vectors. A server receives the sets of vectors from the cameras, determines which of the images depicted the event in a favorable view, based at least in part on the quality of such images, and selects one of the actors as associated with the event accordingly.
    Type: Grant
    Filed: June 28, 2018
    Date of Patent: October 11, 2022
    Assignee: Amazon Technologies, Inc.
    Inventors: Dilip Kumar, Jaechul Kim, Kushagra Srivastava, Nishitkumar Ashokkumar Desai, Jayakrishnan Kumar Eledath, Gerard Guy Medioni, Daniel Bibireata
  • Patent number: 11468400
    Abstract: One or more load cells measure the weight of items at a fixture. Weight changes occur as items are picked from or placed to the fixture and may be used to determine when the item was picked or placed, quantity and so forth. Individual weights for a type of item may vary. A set of data comprising weight changes associated with interactions involving a single one of a particular type of item is gathered. These may be weight changes due to picks, places, or both. A model, such as a probability distribution, may be created that relates a particular weight of that type of item to a probability. The model may then be used to process other weight changes and attempt to determine what type of item was involved in an interaction.
    Type: Grant
    Filed: March 28, 2018
    Date of Patent: October 11, 2022
    Assignee: AMAZON TECHNOLOGIES, INC.
    Inventors: Dilip Kumar, Liefeng Bo, Nikhil Chacko, Robert Crandall, Nishitkumar Ashokkumar Desai, Jayakrishnan Kumar Eledath, Gopi Prashanth Gopal, Gerard Guy Medioni, Paul Eugene Munger, Kushagra Srivastava
  • Patent number: 11436557
    Abstract: One or more load cells measure the weight of items on a shelf or other fixture. Weight changes occur as items are picked from or placed to the fixture. Output from the load cells is processed to produce denoised data. The denoised data is processed to determine event data representative of a pick or a place of an item. Hypotheses are generated using information about where particular types of items are stowed, the weights of those particular types of items, and the event data. A high scoring hypothesis is used to determine interaction data indicative of the type and quantity of an item that was added to or removed from the fixture. If ambiguity exists between hypotheses, additional techniques such as data about locations of weight changes and fine grained analysis may be used to determine the interaction data.
    Type: Grant
    Filed: March 28, 2018
    Date of Patent: September 6, 2022
    Assignee: AMAZON TECHNOLOGIES, INC.
    Inventors: Dilip Kumar, Liefeng Bo, Nikhil Chacko, Robert Crandall, Nishitkumar Ashokkumar Desai, Jayakrishnan Kumar Eledath, Gopi Prashanth Gopal, Gerard Guy Medioni, Paul Eugene Munger, Kushagra Srivastava
  • Patent number: 11308442
    Abstract: Sensor data from load cells at a shelf is processed using a first time window to produce first event data describing coarse and sub-events. Location data is determined that indicates where on the shelf weight changes occurred at particular times. Hypotheses are generated using information about where items are stowed, weights of those of items, type of event, and the location data. If confidence values of these hypotheses are below a threshold value, second event data is determined by merging adjacent sub-events. This second event data is then used to determine second hypotheses which are then assessed. A hypothesis with a high confidence value is used to generate interaction data indicative of picks or places of particular quantities of particular types of items from the shelf.
    Type: Grant
    Filed: March 28, 2018
    Date of Patent: April 19, 2022
    Assignee: AMAZON TECHNOLOGIES, INC.
    Inventors: Dilip Kumar, Liefeng Bo, Nikhil Chacko, Robert Crandall, Nishitkumar Ashokkumar Desai, Jayakrishnan Kumar Eledath, Gopi Prashanth Gopal, Gerard Guy Medioni, Paul Eugene Munger, Kushagra Srivastava
  • Patent number: 11301984
    Abstract: Sensors in a facility obtain sensor data about a user's interaction with a fixture, such as a shelf. The sensor data may include images such as obtained from overhead cameras, weight changes from weight sensors at the shelf, and so forth. Based on the sensor data, one or more hypotheses that indicate the items and quantity may be determined and assessed. The hypotheses may be based on information such as the location of a user and where their hands are, weight changes, physical layout data indicative of where items are stowed, cart data indicative of what items are in the possession of the user, and so forth. A hypothesis having a greatest confidence value may be deemed to be representative of the user's interaction, and interaction data indicative of the item and quantity may be stored.
    Type: Grant
    Filed: June 28, 2018
    Date of Patent: April 12, 2022
    Assignee: AMAZON TECHNOLOGIES, INC.
    Inventors: Dilip Kumar, Nikhil Chacko, Nishitkumar Ashokkumar Desai, Jayakrishnan Kumar Eledath, Gopi Prashanth Gopal, Gerard Guy Medioni, Kushagra Srivastava
  • Patent number: 11263583
    Abstract: Load cells measure the weight of items on a shelf. Weight changes occur as items are picked from or placed to the fixture. Information about these weight changes is used to determine an estimated location on the shelf of a weight change. Hypotheses are generated using information about where particular types of items are stowed, the weights of those particular types of items, information about the weight changes, and the estimated locations of the weight changes. A model is used to produce confidence values in the hypotheses based on a change in weight measured at a first side and a change in weight measured at a second side of the shelf. A hypothesis with a confidence value that exceeds the threshold may be selected and used to determine interaction data indicative of a quantity picked or placed, type of item, and location on the shelf.
    Type: Grant
    Filed: March 28, 2018
    Date of Patent: March 1, 2022
    Assignee: AMAZON TECHNOLOGIES, INC.
    Inventors: Dilip Kumar, Liefeng Bo, Nikhil Chacko, Robert Crandall, Nishitkumar Ashokkumar Desai, Jayakrishnan Kumar Eledath, Gopi Prashanth Gopal, Gerard Guy Medioni, Paul Eugene Munger, Kushagra Srivastava