Patents by Inventor Aishwarya Natesh

Aishwarya Natesh 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: 11238515
    Abstract: The present embodiments provide visual search techniques which produces results that include both accurate similar items as well diversified items through attribute manipulation. In some embodiments, a feature vector describing the item of interest is obtained. A target feature vector is then generated at least partially from the original feature vector, in which the target feature vector shares only a subset of attribute values with the original feature vector and includes at least some values that are different from the original feature vector. An electronic catalog of items is then queried using the target feature vector, and a set of candidate items are determined from the electronic catalog based at least in part on similarity to the target feature vector. The original feature vector may be used to query for a set of similar items that are as similar as possible to the item of interest.
    Type: Grant
    Filed: February 1, 2019
    Date of Patent: February 1, 2022
    Assignee: A9.COM, INC.
    Inventors: Krystle Elaine de Mesa, Aishwarya Natesh, Andrea Joyce Diane Zehr, Rupa Chaturvedi, Mehmet Nejat Tek, Julie Chang
  • Patent number: 11127074
    Abstract: Various embodiments provide for recommending products from an electronic catalog that are aesthetically compatible with an existing item in a physical space based on a live camera view of the space, and rendering augmented reality views of the recommended products into the live camera view. Specifically, an image of the existing item is used to search a database of images of designed spaces that includes a corresponding object visually similar to the existing item. The image of the designed space may also include other items that are visually compatible with the corresponding object and therefore visually compatible with the existing item. Thus, the images of the other items are used to search an electronic catalog for available items that are visually similar to the other items and therefore would be visually compatible with the existing item.
    Type: Grant
    Filed: March 20, 2018
    Date of Patent: September 21, 2021
    Assignee: A9.com, Inc.
    Inventors: Shabnam Ghadar, Shruthi R. Bathina, Sharmila Nagaraja Reddy, Natasha Duggal, Aishwarya Natesh, Andrea Zehr, Pinkee Rasik Patel Gupta
  • Patent number: 11055759
    Abstract: A color selection image matching system can receive, from a computing device, image data captured by a camera in the user device, where the image data includes one or more colors. The computing device can extrapolate a subset of the colors and receive an indication of a target color to initiate a product search based on the target color. The subset of colors may be determined based on other image data, and selectable color elements may be generated for the subset of colors. In some embodiments, the system may generate a palette of colors visually similar to the target color. The target color and/or palette of colors can be cross-referenced with products colors, based on standardized or quantitative color descriptors, to determine relevant product search results matching the target color, which may be displayed on the user device.
    Type: Grant
    Filed: September 5, 2017
    Date of Patent: July 6, 2021
    Assignee: A9.com, Inc.
    Inventors: Aishwarya Natesh, Pinkee Rasik Patel Gupta, Andrea Zehr, Sharmila Nagaraja Reddy, Shruthi R. Bathina, Daniya Zamalieva
  • Patent number: 11037222
    Abstract: Disclosed are various embodiments of systems and methods for dynamically generating and providing personalized recommendations of newer products or services potentially of interest to a particular user who has previously purchased a similar product or service. Historical purchase data or other information indicating the user's preferences is analyzed to determine personal preference data. Candidate content is identified based on attributes found in the preference data. Similarity strategies and criteria can be used to test features and qualities in candidate content. Recommended product or service content comes in the form of candidate content which reaches a similarity threshold or otherwise achieves a sufficient confidence score based at least in part on a similarity metric is determined.
    Type: Grant
    Filed: August 27, 2018
    Date of Patent: June 15, 2021
    Assignee: A9.COM, INC.
    Inventors: Aishwarya Natesh, Pinkee Rasik Patel Gupta, Andrea Joyce Diane Zehr, Sharmila Nagaraja Reddy, Whitney Chan, Deborah S. Hoo
  • Patent number: 10963939
    Abstract: Various embodiments provide techniques for generating a style profile in which items are recognized in image data, analyzed for their attributes, and categorized based on those attributes. In various embodiments, computer vision techniques can be used to analyze the image data and subsequent image data to update the generated style profiles. The style profiles may be associated with a person, event, or the like and provide users with items having similar characteristics or attributes, which may be available for purchase in an electronic marketplace. The style profiles may be updated by analyzing user interaction with the provided items and by receiving additional image data. Additionally, recommendations may be provided based on search queries that identify certain events or style profiles.
    Type: Grant
    Filed: August 27, 2018
    Date of Patent: March 30, 2021
    Assignee: A9.com, Inc.
    Inventors: Andrea Joyce Diane Zehr, Aishwarya Natesh, Sharmila Nagaraja Reddy, Pinkee Rasik Patel Gupta, Whitney Chan, Son D. Tran, Deborah S. Hoo, Smita Malaviya
  • Publication number: 20200342320
    Abstract: Various embodiments utilize a machine learning-based approach to filter items, such as apparel items, based on non-binary gender styles. For example, an electronic catalog of apparel items can be assigned gender scores on a gender scale by a neural network trained to determine a gender score of an apparel item based on an image representation of the apparel item. The neural network may be trained on training data that includes images of various apparel items with gender designations. The apparel items in the electronic catalog are assigned a gender score attribute that reflects how masculine or feminine the apparel item may be. As such, the apparel items can be organized (e.g., sorted, filtered, ranked) based on a non-binary gender score in addition to other attributes, such as item type, size, color, brand, etc. Thus, a user can include non-binary gender style as a search or filtering criteria.
    Type: Application
    Filed: July 13, 2020
    Publication date: October 29, 2020
    Inventor: Aishwarya Natesh
  • Patent number: 10769524
    Abstract: Various embodiments utilize a machine learning-based approach to filter items, such as apparel items, based on non-binary gender styles. For example, an electronic catalog of apparel items can be assigned gender scores on a gender scale by a neural network trained to determine a gender score of an apparel item based on an image representation of the apparel item. The neural network may be trained on training data that includes images of various apparel items with gender designations. The apparel items in the electronic catalog are assigned a gender score attribute that reflects how masculine or feminine the apparel item may be. As such, the apparel items can be organized (e.g., sorted, filtered, ranked) based on a non-binary gender score in addition to other attributes, such as item type, size, color, brand, etc. Thus, a user can include non-binary gender style as a search or filtering criteria.
    Type: Grant
    Filed: September 5, 2017
    Date of Patent: September 8, 2020
    Assignee: A9.COM, INC.
    Inventor: Aishwarya Natesh
  • Patent number: 10635280
    Abstract: Approaches provide for an interactive interface for determining annotation information that can be used to recommend content, improve user interaction and satisfaction, as well as improve various image recognition approaches. For example, a user can be presented an interactive interface, such as a game. The interactive interface can include colored graphical elements, where each graphical element can be associated with and display a visual feature of an item. A user can be provided a task or goal, such as to select, move, or otherwise arrange graphical elements based on a visual feature of the elements. The user interaction can generate annotation information that can be utilized to determine related content as well as improve various image recognition approaches.
    Type: Grant
    Filed: August 9, 2019
    Date of Patent: April 28, 2020
    Assignee: A9.COM, INC.
    Inventors: Aishwarya Natesh, Daniya Zamalieva
  • Publication number: 20190361595
    Abstract: Approaches provide for an interactive interface for determining annotation information that can be used to recommend content, improve user interaction and satisfaction, as well as improve various image recognition approaches. For example, a user can be presented an interactive interface, such as a game. The interactive interface can include colored graphical elements, where each graphical element can be associated with and display a visual feature of an item. A user can be provided a task or goal, such as to select, move, or otherwise arrange graphical elements based on a visual feature of the elements. The user interaction can generate annotation information that can be utilized to determine related content as well as improve various image recognition approaches.
    Type: Application
    Filed: August 9, 2019
    Publication date: November 28, 2019
    Inventors: Aishwarya Natesh, Daniya Zamalieva
  • Publication number: 20190295151
    Abstract: Various embodiments provide for recommending products from an electronic catalog that are aesthetically compatible with an existing item in a physical space based on a live camera view of the space, and rendering augmented reality views of the recommended products into the live camera view. Specifically, an image of the existing item is used to search a database of images of designed spaces that includes a corresponding object visually similar to the existing item. The image of the designed space may also include other items that are visually compatible with the corresponding object and therefore visually compatible with the existing item. Thus, the images of the other items are used to search an electronic catalog for available items that are visually similar to the other items and therefore would be visually compatible with the existing item.
    Type: Application
    Filed: March 20, 2018
    Publication date: September 26, 2019
    Inventors: Shabnam Ghadar, Shruthi R. Bathina, Sharmila Nagaraja Reddy, Natasha Duggal, Aishwarya Natesh, Andrea Zehr, Pinkee Rasik Patel Gupta
  • Patent number: 10379721
    Abstract: Approaches provide for an interactive interface for determining annotation information that can be used to recommend content, improve user interaction and satisfaction, as well as improve various image recognition approaches. For example, a user can be presented an interactive interface, such as a game. The interactive interface can include colored graphical elements, where each graphical element can be associated with and display a visual feature of an item. A user can be provided a task or goal, such as to select, move, or otherwise arrange graphical elements based on a visual feature of the elements. The user interaction can generate annotation information that can be utilized to determine related content as well as improve various image recognition approaches.
    Type: Grant
    Filed: November 28, 2016
    Date of Patent: August 13, 2019
    Assignee: A9.COM, INC.
    Inventors: Aishwarya Natesh, Daniya Zamalieva
  • Patent number: 10109051
    Abstract: Images may be analyzed to determine a visually cohesive color palette, for example by comparing a subset of the colors most frequently appearing in the image to a plurality of color schemes (e.g., complementary, analogous, etc.), and potentially modifying one or more of the subset of colors to more accurately fit the selected color scheme. Various regions of the image are selected and portions of the regions having one or more colors of the color palette are extracted and classified to generate and compare feature vectors of the patches to previously-determined feature vectors of items to identify visually similar items. The visually similar items are selected for presentation in various ways, such as by choosing an outfit of visually-similar apparel items based on the locations of the corresponding colors in the image, etc.
    Type: Grant
    Filed: June 29, 2016
    Date of Patent: October 23, 2018
    Assignee: A9.com, Inc.
    Inventors: Aishwarya Natesh, Arnab Sanat Kumar Dhua, Ming Du, R. Manmatha, Colin Jon Taylor, Mehmet Nejat Tek
  • Patent number: 10083521
    Abstract: Approaches attempt to determine information that can help to produce more useful recommendations to be displayed in a situation where no, or little, information is available that indicates a relationship between content provided through an electronic marketplace or other content provider. For example, data available that relates to an item in a product catalog, for example color data, can be analyzed and aggregated in order to attempt to locate other items that are related and relevant to the item, at least as it relates to color and categorization of the content. Such approaches can include, for example, analyzing images, articles, and other sources of electronic content to attempt to locate items that might be relevant to the item of interest.
    Type: Grant
    Filed: December 4, 2015
    Date of Patent: September 25, 2018
    Assignee: A9.COM, INC.
    Inventors: Arnab Sanat Kumar Dhua, Gautam Bhargava, Ketan Ramesh Deshpande, Ming Du, Aishwarya Natesh, Dheeraj Soti, Colin Jon Taylor
  • Patent number: 10049308
    Abstract: Training images can be synthesized in order to obtain enough data to train a convolutional neural network to recognize various classes of a type of item. Images can be synthesized by blending images of items labeled using those classes into selected background images. Catalog images can represent items against a solid background, which can be identified using connected components or other such approaches. Removing the background using such approaches can result in edge artifacts proximate the item region. To improve the results, one or more operations are performed, such as a morphological erosion operation followed by an opening operation. The isolated item portion then can be blended into a randomly selected background region in order to generate a synthesized training image. The training images can be used with real world images to train the neural network.
    Type: Grant
    Filed: February 21, 2017
    Date of Patent: August 14, 2018
    Assignee: A9.com, Inc.
    Inventors: Arnab Sanat Kumar Dhua, Ming Du, Aishwarya Natesh
  • Patent number: 10043109
    Abstract: A set of training images is obtained by analyzing text associated with various images to identify images likely demonstrating a visual attribute. Localization can be used to extract patches corresponding to these attributes, which can then have features or feature vectors determined to train, for example, a convolutional neural network. A query image can be received and analyzed using the trained network to determine a set of items whose images demonstrate visual similarity to the query image at least with respect to the attribute of interest. The similarity can be output from the network or determined using distances in attribute space. Content for at least a determined number of highest ranked, or most similar, items can then be provided in response to the query image.
    Type: Grant
    Filed: January 23, 2017
    Date of Patent: August 7, 2018
    Assignee: A9.COM, INC.
    Inventors: Ming Du, Arnab Sanat Kumar Dhua, Douglas Ryan Gray, Maya Kabkab, Aishwarya Natesh, Colin Jon Taylor