Patents by Inventor Sricharan Kallur Palli Kumar

Sricharan Kallur Palli Kumar 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: 20210042820
    Abstract: In one embodiment a finite rank deep kernel learning method includes: receiving a training dataset; forming a plurality of training data subsets from the training dataset; for each respective training data subset of the plurality of training data subsets: calculating a subset-specific loss based on a loss function and the respective training data subset; and optimizing a model based on the subset-specific loss; determining a set of embeddings based on the optimized model; determining, based on the set of embeddings, a plurality of dot kernels; combining the plurality of dot kernels to form a composite kernel for a Gaussian process; receiving live data from an application; and predicting a plurality of values and a plurality of uncertainties associated with the plurality of values simultaneously using the composite kernel.
    Type: Application
    Filed: May 22, 2020
    Publication date: February 11, 2021
    Inventors: Sricharan Kallur Palli KUMAR, Sambarta DASGUPTA, Sameeksha KHILLAN
  • Publication number: 20200250484
    Abstract: One embodiment provides a system that facilitates efficient collection of training data. During operation, the system obtains, by a recording device, a first image of a physical object in a scene which is associated with a three-dimensional (3D) world coordinate frame. The system marks, on the first image, a plurality of vertices associated with the physical object, wherein a vertex has 3D coordinates based on the 3D world coordinate frame. The system obtains a plurality of second images of the physical object in the scene while changing one or more characteristics of the scene. The system projects the marked vertices on to a respective second image to indicate a two-dimensional (2D) bounding area associated with the physical object.
    Type: Application
    Filed: April 23, 2020
    Publication date: August 6, 2020
    Applicant: Palo Alto Research Center Incorporated
    Inventors: Matthew A. Shreve, Sricharan Kallur Palli Kumar, Jin Sun, Gaurang R. Gavai, Robert R. Price, Hoda M. A. Eldardiry
  • Patent number: 10699165
    Abstract: One embodiment provides a system that facilitates efficient collection of training data. During operation, the system obtains, by a recording device, a first image of a physical object in a scene which is associated with a three-dimensional (3D) world coordinate frame. The system marks, on the first image, a plurality of vertices associated with the physical object, wherein a vertex has 3D coordinates based on the 3D world coordinate frame. The system obtains a plurality of second images of the physical object in the scene while changing one or more characteristics of the scene. The system projects the marked vertices on to a respective second image to indicate a two-dimensional (2D) bounding area associated with the physical object.
    Type: Grant
    Filed: November 29, 2017
    Date of Patent: June 30, 2020
    Assignee: Palo Alto Research Center Incorporated
    Inventors: Matthew A. Shreve, Sricharan Kallur Palli Kumar, Jin Sun, Gaurang R. Gavai, Robert R. Price, Hoda M. A. Eldardiry
  • Publication number: 20200193607
    Abstract: One embodiment can provide a system for detecting outlines of objects in images. During operation, the system receives an image that includes at least one object, generates a random noise signal, and provides the received image and the random noise signal to a shape-regressor module, which applies a shape-regression model to predict a shape outline of an object within the received image.
    Type: Application
    Filed: December 17, 2018
    Publication date: June 18, 2020
    Applicant: Palo Alto Research Center Incorporated
    Inventors: Jin Sun, Sricharan Kallur Palli Kumar, Raja Bala
  • Publication number: 20200026416
    Abstract: Embodiments described herein provide a system for generating semantically accurate synthetic images. During operation, the system generates a first synthetic image using a first artificial intelligence (AI) model and presents the first synthetic image in a user interface. The user interface allows a user to identify image units of the first synthetic image that are semantically irregular. The system then obtains semantic information for the semantically irregular image units from the user via the user interface and generates a second synthetic image using a second AI model based on the semantic information. The second synthetic image can be an improved image compared to the first synthetic image.
    Type: Application
    Filed: July 19, 2018
    Publication date: January 23, 2020
    Applicant: Palo Alto Research Center Incorporated
    Inventors: Raja Bala, Sricharan Kallur Palli Kumar, Matthew A. Shreve
  • Publication number: 20190147333
    Abstract: One embodiment facilitates generating synthetic data objects using a semi-supervised GAN. During operation, a generator module synthesizes a data object derived from a noise vector and an attribute label. The system passes, to an unsupervised discriminator module, the data object and a set of training objects which are obtained from a training data set. The unsupervised discriminator module calculates: a value indicating a probability that the data object is real; and a latent feature representation of the data object. The system passes the latent feature representation and the attribute label to a supervised discriminator module. The supervised discriminator module calculates a value indicating a probability that the attribute label given the data object is real. The system performs the aforementioned steps iteratively until the generator module produces data objects with a given attribute label which the unsupervised and supervised discriminator modules can no longer identify as fake.
    Type: Application
    Filed: November 29, 2017
    Publication date: May 16, 2019
    Applicant: Palo Alto Research Center Incorporated
    Inventors: Sricharan Kallur Palli Kumar, Raja Bala, Jin Sun, Hui Ding, Matthew A. Shreve
  • Publication number: 20190130219
    Abstract: One embodiment provides a system that facilitates efficient collection of training data. During operation, the system obtains, by a recording device, a first image of a physical object in a scene which is associated with a three-dimensional (3D) world coordinate frame. The system marks, on the first image, a plurality of vertices associated with the physical object, wherein a vertex has 3D coordinates based on the 3D world coordinate frame. The system obtains a plurality of second images of the physical object in the scene while changing one or more characteristics of the scene. The system projects the marked vertices on to a respective second image to indicate a two-dimensional (2D) bounding area associated with the physical object.
    Type: Application
    Filed: November 29, 2017
    Publication date: May 2, 2019
    Applicant: Palo Alto Research Center Incorporated
    Inventors: Matthew A. Shreve, Sricharan Kallur Palli Kumar, Jin Sun, Gaurang R. Gavai, Robert R. Price, Hoda M. A. Eldardiry
  • Patent number: 10140576
    Abstract: A computer-implemented system and method for detecting anomalies using sample-based rule identification is provided. Data for data is maintained analytics in a database. A set of anomaly rules is defined. A rare pattern in the data is statistically identified. The identified rare pattern is labeled as at least one of anomaly and non-anomaly based on verification by a domain expert. The set of anomaly rules is adjusted based on the labeled anomaly. Other anomalies in the data are detected and classified by applying the adjusted set of anomaly rules to the data.
    Type: Grant
    Filed: August 10, 2014
    Date of Patent: November 27, 2018
    Assignee: Palo Alto Research Center Incorporated
    Inventors: Hoda Eldardiry, Sricharan Kallur Palli Kumar, Daniel H. Greene, Robert Price
  • Publication number: 20160042287
    Abstract: A computer-implemented system and method for detecting anomalies using sample-based rule identification is provided. Data for data is maintained analytics in a database. A set of anomaly rules is defined. A rare pattern in the data is statistically identified. The identified rare pattern is labeled as at least one of anomaly and non-anomaly based on verification by a domain expert. The set of anomaly rules is adjusted based on the labeled anomaly. Other anomalies in the data are detected and classified by applying the adjusted set of anomaly rules to the data.
    Type: Application
    Filed: August 10, 2014
    Publication date: February 11, 2016
    Inventors: Hoda Eldardiry, Sricharan Kallur Palli Kumar, Daniel H. Greene, Robert Price
  • Publication number: 20150286783
    Abstract: One embodiment of the present invention provides a system for detecting anomalies. During operation, the system extracts from a data set of entities features which provide meaningful information about the entities. The system identifies a peer group for the entities in the data set based on auxiliary information which comprises information that is distinct from the extracted features. In order to determine the anomalies, the system compares the extracted features of an entity in the peer group against the extracted features of other entities in the corresponding peer group, where significant differences in results of the comparison are indicative of anomalies.
    Type: Application
    Filed: April 2, 2014
    Publication date: October 8, 2015
    Applicant: PALO ALTO RESEARCH CENTER INCORPORATED
    Inventors: Sricharan Kallur Palli Kumar, Juan J. Liu