Patents by Inventor Joseph Rosenberg
Joseph Rosenberg 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).
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Patent number: 12353471Abstract: Systems and methods for responding to a subscriber's text-based request for content items are presented. In response to a request from a subscriber, word pieces are generated from the text-based terms of the request. A request embedding vector of the word pieces is obtained from a trained machine learning model. Using the request embedding vector, a set of content items, from a corpus of content items, is identified. At least some content items of the set of content items are returned to the subscriber in response to the text-based request for content items.Type: GrantFiled: November 2, 2023Date of Patent: July 8, 2025Assignee: Pinterest, Inc.Inventors: Nikil Pancha, Andrew Huan Zhai, Charles Joseph Rosenberg
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Patent number: 12079289Abstract: Systems and methods for recommending content to an online service subscriber are presented. For each subscriber, content items that were the subject of the subscriber's prior interactions are projected, via associated embedding vectors, into a content item embedding space. The content items, via their projections into the content item embedding space, are clustered to form a plurality of interest clusters for the subscriber. A representative embedding vector is determined for each interest cluster, and a plurality of these embedding vectors are stored as the representative embedding vectors for the subscriber. The online service, in response to a request for recommended content for a subscriber, selects a first representative embedding vector associated with the subscriber and identifies a new content item from a corpus of content items according to a similarity measure between the first representative embedding vector and an embedding vector associated with the new content item.Type: GrantFiled: August 8, 2022Date of Patent: September 3, 2024Assignee: Pinterest, Inc.Inventors: Aditya Pal, Chantat Eksombatchai, Yitong Zhou, Bo Zhao, Charles Joseph Rosenberg, Jurij Leskovec
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Publication number: 20240061875Abstract: Systems and methods for responding to a subscriber's text-based request for content items are presented. In response to a request from a subscriber, word pieces are generated from the text-based terms of the request. A request embedding vector of the word pieces is obtained from a trained machine learning model. Using the request embedding vector, a set of content items, from a corpus of content items, is identified. At least some content items of the set of content items are returned to the subscriber in response to the text-based request for content items.Type: ApplicationFiled: November 2, 2023Publication date: February 22, 2024Applicant: Pinterest, Inc.Inventors: Nikil Pancha, Andrew Huan Zhai, Charles Joseph Rosenberg
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Patent number: 11841897Abstract: Systems and methods for responding to a subscriber's text-based request for content items are presented. In response to a request from a subscriber, word pieces are generated from the text-based terms of the request. A request embedding vector of the word pieces is obtained from a trained machine learning model. Using the request embedding vector, a set of content items, from a corpus of content items, is identified. At least some content items of the set of content items are returned to the subscriber in response to the text-based request for content items.Type: GrantFiled: December 29, 2022Date of Patent: December 12, 2023Assignee: Pinterest, Inc.Inventors: Nikil Pancha, Andrew Huan Zhai, Charles Joseph Rosenberg
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Publication number: 20230252550Abstract: Described are systems and methods for providing a multi-tasked trained machine learning model that may be configured to generate product embeddings from multiple types of product information. The exemplary product embeddings may be generated for a corpus of products (e.g., products included in a product catalog, etc.) based on both image information and text information associated with each respective product. Accordingly, the generated product embeddings may be compatible with learned representations of the different types of product information (e.g., image information, text information, etc.) and may be used to create a product index, which can be used to determine and serve product recommendations in connection with multiple different recommendation services that may be configured to receive different types of inputs (e.g., a single image, multiple images, text-based information, etc.).Type: ApplicationFiled: February 9, 2023Publication date: August 10, 2023Applicant: Pinterest, Inc.Inventors: Paul Baltescu, Andrew Huan Zhai, Haoyu Chen, Jurij Leskovec, Nikil Pancha, Charles Joseph Rosenberg
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Publication number: 20230185840Abstract: Systems and methods for responding to a subscriber's text-based request for content items are presented. In response to a request from a subscriber, word pieces are generated from the text-based terms of the request. A request embedding vector of the word pieces is obtained from a trained machine learning model. Using the request embedding vector, a set of content items, from a corpus of content items, is identified. At least some content items of the set of content items are returned to the subscriber in response to the text-based request for content items.Type: ApplicationFiled: December 29, 2022Publication date: June 15, 2023Applicant: Pinterest, Inc.Inventors: Nikil Pancha, Andrew Huan Zhai, Charles Joseph Rosenberg
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Publication number: 20230177089Abstract: Systems and methods for identifying content for an input query are presented. A mapping model is trained to map elements of an input query embedding vector for a received query into one or more elements of a destination embedding vector. In response to receiving an input query, an input query embedding vector is generated that projects into an input query embedding space. The input query embedding vector is processed by the mapping model to map the input query embedding vector into one or more elements of a destination embedding vector in a destination embedding space, resulting in a partial destination embedding vector. Items of a corpus of content are projected into the destination embedding space and the partial destination embedding vector is also projected into the destination embedding space. A similarity measure determines the most-similar items to the partial destination embedding vector and at least some of the most-similar items are returned in response to the input query.Type: ApplicationFiled: February 2, 2023Publication date: June 8, 2023Applicant: Pinterest, Inc.Inventors: Andrew Huan Zhai, Kaifeng Chen, Charles Joseph Rosenberg
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Patent number: 11574020Abstract: Systems and methods for identifying content for an input query are presented. A mapping model is trained to map elements of an input query embedding vector for a received query into one or more elements of a destination embedding vector. In response to receiving an input query, an input query embedding vector is generated that projects into an input query embedding space. The input query embedding vector is processed by the mapping model to map the input query embedding vector into one or more elements of a destination embedding vector in a destination embedding space, resulting in a partial destination embedding vector. Items of a corpus of content are projected into the destination embedding space and the partial destination embedding vector is also projected into the destination embedding space. A similarity measure determines the most-similar items to the partial destination embedding vector and at least some of the most-similar items are returned in response to the input query.Type: GrantFiled: December 12, 2019Date of Patent: February 7, 2023Assignee: Pinterest, Inc.Inventors: Andrew Huan Zhai, Kaifeng Chen, Charles Joseph Rosenberg
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Patent number: 11544317Abstract: Systems and methods for responding to a subscriber's text-based request for content items are presented. In response to a request from a subscriber, word pieces are generated from the text-based terms of the request. A request embedding vector of the word pieces is obtained from a trained machine learning model. Using the request embedding vector, a set of content items, from a corpus of content items, is identified. At least some content items of the set of content items are returned to the subscriber in response to the text-based request for content items.Type: GrantFiled: August 20, 2020Date of Patent: January 3, 2023Assignee: Pinterest, Inc.Inventors: Nikil Pancha, Andrew Huan Zhai, Charles Joseph Rosenberg
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Publication number: 20220374474Abstract: Systems and methods for recommending content to an online service subscriber are presented. For each subscriber, content items that were the subject of the subscriber's prior interactions are projected, via associated embedding vectors, into a content item embedding space. The content items, via their projections into the content item embedding space, are clustered to form a plurality of interest clusters for the subscriber. A representative embedding vector is determined for each interest cluster, and a plurality of these embedding vectors are stored as the representative embedding vectors for the subscriber. The online service, in response to a request for recommended content for a subscriber, selects a first representative embedding vector associated with the subscriber and identifies a new content item from a corpus of content items according to a similarity measure between the first representative embedding vector and an embedding vector associated with the new content item.Type: ApplicationFiled: August 8, 2022Publication date: November 24, 2022Inventors: Aditya Pal, Chantat Eksombatchai, Yitong Zhou, Bo Zhao, Charles Joseph Rosenberg, Jurij Leskovec
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Patent number: 11409821Abstract: Systems and methods for recommending content to an online service subscriber are presented. For each subscriber, content items that were the subject of the subscriber's prior interactions are projected, via associated embedding vectors, into a content item embedding space. The content items, via their projections into the content item embedding space, are clustered to form a plurality of interest clusters for the subscriber. A representative embedding vector is determined for each interest cluster, and a plurality of these embedding vectors are stored as the representative embedding vectors for the subscriber. The online service, in response to a request for recommended content for a subscriber, selects a first representative embedding vector associated with the subscriber and identifies a new content item from a corpus of content items according to a similarity measure between the first representative embedding vector and an embedding vector associated with the new content item.Type: GrantFiled: June 23, 2020Date of Patent: August 9, 2022Assignee: Pinterest, Inc.Inventors: Aditya Pal, Chantat Eksombatchai, Yitong Zhou, Bo Zhao, Charles Joseph Rosenberg, Jurij Leskovec
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Publication number: 20220122354Abstract: Described are systems and methods for extracting parameters associated with a look/beauty aesthetic presented in a content item such as an image or a video. The extracted parameters can be used to identify beauty products that can be used to create a similar look/beauty aesthetic and to render the beauty product on a streaming live-feed video of the user so that the user can assess how the product looks on the user. Aspects of the disclosure also relate to classifying content items presenting a look/beauty aesthetic based on a dominant skin tone present in the content item.Type: ApplicationFiled: December 28, 2021Publication date: April 21, 2022Inventors: Aleksandr Burdin, Anqi Guo, Charles Joseph Rosenberg, Cindy Xinwei Zhang, David Ding-Jia Xue, Dmitry Olegovich Kislyuk, Emma Catherine Herold, Eric Tzeng, Jeffrey Harris, Joshua Richard Beal, Long Cheng, Nadia Fawaz, Rahul Rekha Gupta, Dong Huk Park, Shana Hu, Vy Do Phan, Yixue Li
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Patent number: 10945469Abstract: A respirator mask. The respirator mask has a filter that extends around at least a portion of the perimeter of the mask itself, leaving a central area that coincides with the position of the wearer's mouth unobstructed. A front panel of the mask may be transparent over at least the central area in order to allow the mouth to be seen while the mask is worn. The filter may be a pleated particulate filter, a chemical/gas filter, or a filter of mixed type. The front panel may also include other features, like a port for a drinking straw. The respirator mask may include headgear.Type: GrantFiled: July 1, 2020Date of Patent: March 16, 2021Assignee: Grove Biomedical LLCInventors: Joseph Rosenberg, Qing Xiang Yee, Joshua Boggs, Adam Pozdro, Benjamin Frothingham, Douglas Clift
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Patent number: 10736672Abstract: A surgical instrument includes an actuator. A first member is connected with the actuator and is configured to engage a bone fastener that defines a first implant cavity and a second implant cavity. A second member is connected with the actuator and includes an implant engaging surface having a first portion movable along the first implant cavity and a second portion movable along the second implant cavity. Systems, spinal constructs, implants and methods are disclosed.Type: GrantFiled: May 25, 2017Date of Patent: August 11, 2020Assignee: Warsaw Orthopedic, Inc.Inventors: David A. Mire, Joseph Rosenberger, Michael Simmons, Christopher I. Shaffrey
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Patent number: 10268703Abstract: A system and computer-implemented method for associating images with semantic entities and providing search results using the semantic entities. An image database contains one or more source images associated with one or more images labels. A computer may generate one or more documents containing the labels associated with each image. Analysis may be performed on the one or more documents to associate the source images with semantic entities. The semantic entities may be used to provide search results. In response to receiving a target image as a search query, the target image may be compared with the source images to identify similar images. The semantic entities associated with the similar images may be used to determine a semantic entity for the target image. The semantic entity for the target image may be used to provide search results in response to the search initiated by the target image.Type: GrantFiled: December 8, 2016Date of Patent: April 23, 2019Assignee: Google LLCInventors: Maks Ovsjanikov, Yuan Li, Hartwig Adam, Charles Joseph Rosenberg
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Publication number: 20180338783Abstract: A surgical instrument includes an actuator. A first member is connected with the actuator and is configured to engage a bone fastener that defines a first implant cavity and a second implant cavity. A second member is connected with the actuator and includes an implant engaging surface having a first portion movable along the first implant cavity and a second portion movable along the second implant cavity. Systems, spinal constructs, implants and methods are disclosed.Type: ApplicationFiled: May 25, 2017Publication date: November 29, 2018Inventors: David A. Mire, Joseph Rosenberger, Michael Simmons, Christopher I. Shaffrey
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Patent number: 9600496Abstract: A system and computer-implemented method for associating images with semantic entities and providing search results using the semantic entities. An image database contains one or more source images associated with one or more images labels. A computer may generate one or more documents containing the labels associated with each image. Analysis may be performed on the one or more documents to associate the source images with semantic entities. The semantic entities may be used to provide search results. In response to receiving a target image as a search query, the target image may be compared with the source images to identify similar images. The semantic entities associated with the similar images may be used to determine a semantic entity for the target image. The semantic entity for the target image may be used to provide search results in response to the search initiated by the target image.Type: GrantFiled: September 10, 2015Date of Patent: March 21, 2017Assignee: Google Inc.Inventors: Maks Ovsjanikov, Yuan Li, Hartwig Adam, Charles Joseph Rosenberg
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Patent number: 9311530Abstract: Embodiments generally relate to summarizing a photo album in a social network system. In one embodiment, a method includes grouping photos into a plurality of groups of photos, and selecting a plurality of representative photos, where each representative photo represents a respective group from the plurality of groups, where the selecting is based on a quality score of each of the photos, and where each quality score is based on different types of attributes. The method also includes enabling the plurality of representative photos to be shared.Type: GrantFiled: October 21, 2014Date of Patent: April 12, 2016Assignee: Google Inc.Inventors: Erik Murphy-Chutorian, Charles Joseph Rosenberg, Shengyang Dai, Ehud Rivlin, Mei Han, Kyle Heath
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Patent number: 9171018Abstract: A system and computer-implemented method for associating images with semantic entities and providing search results using the semantic entities. An image database contains one or more source images associated with one or more images labels. A computer may generate one or more documents containing the labels associated with each image. Analysis may be performed on the one or more documents to associate the source images with semantic entities. The semantic entities may be used to provide search results. In response to receiving a target image as a search query, the target image may be compared with the source images to identify similar images. The semantic entities associated with the similar images may be used to determine a semantic entity for the target image. The semantic entity for the target image may be used to provide search results in response to the search initiated by the target image.Type: GrantFiled: January 16, 2013Date of Patent: October 27, 2015Assignee: Google Inc.Inventors: Maks Ovsjanikov, Yuan Li, Hartwig Adam, Charles Joseph Rosenberg
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Patent number: D945599Type: GrantFiled: September 23, 2020Date of Patent: March 8, 2022Assignee: Grove Biomedical, LLCInventors: Joseph Rosenberg, Qing Xiang Yee, Joshua Boggs, Adam Pozdro, Benjamin Frothingham, Douglas Clift