Patents by Inventor Scott Labrozzi
Scott Labrozzi 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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Publication number: 20240021216Abstract: A system includes processing hardware and a memory storing software code. The processing hardware executes the software code to receive automation data for media content having a default playback experience, analyze, using the automation data, at least one parameter of the media content, and generate, based on the analyzing, one or more automation instruction(s) for at least one portion(s) of the media content. The automation instruction(s) include at least one of: one or more bounding timestamps of the media content portion(s), an increased or reduced playback speed for the media content portion(s) relative to the default playback experience, or a variable playback speed for the media content portion(s). The software code is further executed to outputs the automation instruction(s) to a media delivery platform configured to distribute and control the quality of the media content or to a media player configured to automate playback of the media content.Type: ApplicationFiled: July 14, 2022Publication date: January 18, 2024Inventors: Manuel Briand, Yuanyi Xue, Anthony Crowe, Scott Labrozzi, Michael Bracco, Mugdha Oltikar
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Publication number: 20240015369Abstract: A system includes a computing platform having processing hardware, and a memory storing software code. The software code is executed to receive content having a sequence of content segments, and marker data identifying a location within the sequence, identify, using the content and the marker data, segment boundaries of a content segment containing the location, determine, using the location and the segment boundaries, whether the location is situated within a predetermined interval of one of the segment boundaries, and re-encode a subsection of the sequence to produce a new segment boundary at the location. When the location is not situated within the predetermined interval, the subsection of the sequence includes the content segment containing the location. When the location is situated within the predetermined interval, the subsection of the sequence includes the content segment containing the location and a content segment adjoining the content segment containing the location.Type: ApplicationFiled: July 8, 2022Publication date: January 11, 2024Inventors: Scott Labrozzi, William B. May, JR.
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Publication number: 20230379475Abstract: A system includes a machine learning (ML) model-based video downsampler configured to receive an input video sequence having a first display resolution, and to map the input video sequence to a lower resolution video sequence having a second display resolution lower than the first display resolution. The system also includes a neural network-based (NN-based) proxy video codec configured to transform the lower resolution video sequence into a decoded proxy bitstream. In addition, the system includes an upsampler configured to produce an output video sequence using the decoded proxy bitstream.Type: ApplicationFiled: August 4, 2023Publication date: November 23, 2023Inventors: Christopher Richard Schroers, Roberto Gerson de Albuquerque Azevedo, Nicholas David Gregory, Yuanyi Xue, Scott Labrozzi, Abdelaziz Djelouah
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Patent number: 11765360Abstract: A system includes a machine learning (ML) model-based video downsampler configured to receive an input video sequence having a first display resolution, and to map the input video sequence to a lower resolution video sequence having a second display resolution lower than the first display resolution. The system also includes a neural network-based (NN-based) proxy video codec configured to transform the lower resolution video sequence into a decoded proxy bitstream. In addition, the system includes an upsampler configured to produce an output video sequence using the decoded proxy bitstream.Type: GrantFiled: October 13, 2021Date of Patent: September 19, 2023Assignees: Disney Enterprises, Inc., ETH ZurichInventors: Christopher Richard Schroers, Roberto Gerson de Albuquerque Azevedo, Nicholas David Gregory, Yuanyi Xue, Scott Labrozzi, Abdelaziz Djelouah
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Publication number: 20230116696Abstract: A system includes a machine learning (ML) model-based video downsampler configured to receive an input video sequence having a first display resolution, and to map the input video sequence to a lower resolution video sequence having a second display resolution lower than the first display resolution. The system also includes a neural network-based (NN-based) proxy video codec configured to transform the lower resolution video sequence into a decoded proxy bitstream. In addition, the system includes an upsampler configured to produce an output video sequence using the decoded proxy bitstream.Type: ApplicationFiled: October 13, 2021Publication date: April 13, 2023Inventors: Christopher Richard Schroers, Roberto Gerson de Albuquerque Azevedo, Nicholas David Gregory, Yuanyi Xue, Scott Labrozzi, Abdelaziz Djelouah
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Publication number: 20230077379Abstract: Systems and methods are disclosed for compressing a target video. A computer-implemented method may use a computer system that include one or more physical computer processors and non-transient electronic storage. The computer-implemented method may include: obtaining the target video, extracting one or more frames from the target video, and generating an estimated optical flow based on a displacement of pixels between the one or more frames. The one or more frames may include one or more of a key frame and a target frame.Type: ApplicationFiled: October 24, 2022Publication date: March 16, 2023Inventors: Christopher SCHROERS, Simone SCHAUB, Erika DOGGETT, Jared MCPHILLEN, Scott LABROZZI, Abdelaziz DJELOUAH
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Publication number: 20220337852Abstract: A system includes a machine learning (ML) model-based video encoder configured to receive an uncompressed video sequence including multiple video frames, determine, from among the multiple video frames, a first video frame subset and a second video frame subset, encode the first video frame subset to produce a first compressed video frame subset, and identify a first decompression data for the first compressed video frame subset. The ML model-based video encoder is further configured to encode the second video frame subset to produce a second compressed video frame subset, and identify a second decompression data for the second compressed video frame subset. The first decompression data is specific to decoding the first compressed video frame subset but not the second compressed video frame subset, and the second decompression data is specific to decoding the second compressed video frame subset but not the first compressed video frame subset.Type: ApplicationFiled: March 25, 2022Publication date: October 20, 2022Inventors: Abdelaziz Djelouah, Leonhard Markus Helminger, Roberto Gerson de Albuquerque Azevedo, Christopher Richard Schroers, Scott Labrozzi, Yuanyi Xue
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Publication number: 20220329876Abstract: A system processing hard e executes a machine learning (ML) model-based video compression encoder to receive uncompressed video content and corresponding motion compensated video content, compare the uncompressed and motion compensated video content to identify an image space residual, transform the image space residual to a latent space representation of the uncompressed video content, and transform, using a trained image compression ML model, the motion compensated video content to a latent space representation of the motion compensated video content.Type: ApplicationFiled: March 25, 2022Publication date: October 13, 2022Inventors: Abdelaziz Djelouah, Leonhard Markus Helminger, Roberto Gerson de Albuquerque Azevedo, Scott Labrozzi, Christopher Richard Schroers, Yuanyi Xue
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Publication number: 20220309345Abstract: A system includes a computing platform having processing hardware, and a system memory storing software code and one or more machine learning (ML) model(s) trained using contrastive learning based on a similarity metric. The processing hardware is configured to execute the software code to receive input data including a plurality of content segments, map, using the ML model(s), each of the plurality of content segments to a respective embedding in a continuous vector space to provide a plurality of mapped embeddings, and perform one of a classification or a regression of the content segments using the plurality of mapped embeddings. The processing hardware is also configured to execute the software code to discover, based on the classification or the regression, at least one new label for characterizing the plurality of content segments.Type: ApplicationFiled: March 16, 2022Publication date: September 29, 2022Inventors: Erika Varis Doggett, Audrey Coyote Aura Beard, Christopher Richard Schroers, Roberto Gerson de Albuquerque Azevedo, Scott Labrozzi, Yuanyi Xue, James Zimmerman
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Publication number: 20220215595Abstract: Systems and methods for predicting a target set of pixels are disclosed. In one embodiment, a method may include obtaining target content. The target content may include a target set of pixels to be predicted. The method may also include convolving the target set of pixels to generate an estimated set of pixels. The method may include matching a second set of pixels in the target content to the target set of pixels. The second set of pixels may be within a distance from the target set of pixels. The method may include refining the estimated set of pixels to generate a refined set of pixels using a second set of pixels in the target content.Type: ApplicationFiled: March 25, 2022Publication date: July 7, 2022Inventors: Christopher SCHROERS, Erika DOGGETT, Stephan MANDT, Jared MCPHILLEN, Scott LABROZZI, Romann WEBER, Mauro BAMERT
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Patent number: 11335034Abstract: Systems and methods for predicting a target set of pixels are disclosed. In one embodiment, a method may include obtaining target content. The target content may include a target set of pixels to be predicted. The method may also include convolving the target set of pixels to generate an estimated set of pixels. The method may include matching a second set of pixels in the target content to the target set of pixels. The second set of pixels may be within a distance from the target set of pixels. The method may include refining the estimated set of pixels to generate a refined set of pixels using a second set of pixels in the target content.Type: GrantFiled: January 16, 2019Date of Patent: May 17, 2022Assignee: Disney Enterprises, Inc.Inventors: Christopher Schroers, Erika Doggett, Stephan Marcel Mandt, Jared McPhillen, Scott Labrozzi, Romann Weber, Mauro Bamert
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Patent number: 11057634Abstract: A data processing system includes a computing platform having a hardware processor and a memory storing a data compression software code. The hardware processor executes the data compression software code to receive a series of compression input data and encode a first compression input data of the series to a latent space representation of the first compression input data. The data compression software code further decodes the latent space representation to produce an input space representation of the first compression input data corresponding to the latent space representation, and generates f refined latent values for re-encoding the first compression input data based on a comparison of the first compression input data with its input space representation. The data compression software code then re-encodes the first compression input data using the refined latent values to produce a first compressed data corresponding to the first compression input data.Type: GrantFiled: May 15, 2019Date of Patent: July 6, 2021Assignee: Disney Enterprises, Inc.Inventors: Christopher Schroers, Simon Meierhans, Joaquim Campos, Jared McPhillen, Abdelaziz Djelouah, Erika Varis Doggett, Scott Labrozzi, Yuanyi Xue
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Patent number: 11012718Abstract: Systems and methods are disclosed for generating a latent space residual. A computer-implemented method may use a computer system that includes non-transient electronic storage, a graphical user interface, and one or more physical computer processors. The computer-implemented method may include: obtaining a target frame, obtaining a reconstructed frame, encoding the target frame into a latent space to generate a latent space target frame, encoding the reconstructed frame into the latent space to generate a latent space reconstructed frame, and generating a latent space residual based on the latent space target frame and the latent space reconstructed frame.Type: GrantFiled: August 30, 2019Date of Patent: May 18, 2021Assignee: Disney Enterprises, Inc.Inventors: Christopher Schroers, Joaquim Campos, Abdelaziz Djelouah, Yuanyi Xue, Erika Varis Doggett, Jared McPhillen, Scott Labrozzi
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Publication number: 20210142524Abstract: According to one implementation, an image compression system includes a computing platform having a hardware processor and a system memory storing a software code. The hardware processor executes the software code to receive an input image, transform the input image to a latent space representation of the input image, and quantize the latent space representation of the input image to produce multiple quantized latents. The hardware processor further executes the software code to encode the quantized latents using a probability density function of the latent space representation of the input image, to generate a bitstream, and convert the bitstream into an output image corresponding to the input image. The probability density function of the latent space representation of the input image is obtained based on a normalizing flow mapping of one of the input image or the latent space representation of the input image.Type: ApplicationFiled: March 6, 2020Publication date: May 13, 2021Inventors: Abdelaziz Djelouah, Leonhard Markus Helminger, Scott Labrozzi, Yuanyi Xue, Erika Varis Doggett, Jared McPhillen, Christopher Richard Schroers
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Patent number: 10972749Abstract: Systems and methods are disclosed for reconstructing a frame. A computer-implemented method may use a computer system that includes non-transient electronic storage, a graphical user interface, and one or more physical computer processors. The computer-implemented method may include: obtaining one or more reference frames from non-transient electronic storage, generating one or more displacement maps based on the one or more reference frames and a target frame with the physical computer processor, generating one or more warped frames based on the one or more reference frames and the one or more displacement maps with the physical computer processor, obtaining a conditioned reconstruction model from the non-transient electronic storage, and generating one or more blending coefficients and one or more reconstructed displacement maps by applying the one or more displacement maps, the one or more warped frames, and a target frame to the conditioned reconstruction model with the physical computer processor.Type: GrantFiled: August 29, 2019Date of Patent: April 6, 2021Assignee: Disney Enterprises, Inc.Inventors: Christopher Schroers, Joaquim Campos, Abdelaziz Djelouah, Yuanyi Xue, Erika Varis Doggett, Jared McPhillen, Scott Labrozzi
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Publication number: 20210067808Abstract: Systems and methods are disclosed for generating a latent space residual. A computer-implemented method may use a computer system that includes non-transient electronic storage, a graphical user interface, and one or more physical computer processors. The computer-implemented method may include: obtaining a target frame, obtaining a reconstructed frame, encoding the target frame into a latent space to generate a latent space target frame, encoding the reconstructed frame into the latent space to generate a latent space reconstructed frame, and generating a latent space residual based on the latent space target frame and the latent space reconstructed frame.Type: ApplicationFiled: August 30, 2019Publication date: March 4, 2021Applicant: Disney Enterprises, Inc.Inventors: Christopher Schroers, Joaquim Campos, Abdelaziz Djelouah, Yuanyi Xue, Erika Varis Doggett, Jared McPhillen, Scott Labrozzi
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Publication number: 20210067801Abstract: Systems and methods are disclosed for reconstructing a frame. A computer-implemented method may use a computer system that includes non-transient electronic storage, a graphical user interface, and one or more physical computer processors. The computer-implemented method may include: obtaining one or more reference frames from non-transient electronic storage, generating one or more displacement maps based on the one or more reference frames and a target frame with the physical computer processor, generating one or more warped frames based on the one or more reference frames and the one or more displacement maps with the physical computer processor, obtaining a conditioned reconstruction model from the non-transient electronic storage, and generating one or more blending coefficients and one or more reconstructed displacement maps by applying the one or more displacement maps, the one or more warped frames, and a target frame to the conditioned reconstruction model with the physical computer processor.Type: ApplicationFiled: August 29, 2019Publication date: March 4, 2021Applicant: Disney Enterprises, Inc.Inventors: Christopher Schroers, Joaquim Campos, Abdelaziz Djelouah, Yuanyi Xue, Erika Varis Doggett, Jared McPhillen, Scott Labrozzi
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Publication number: 20200366914Abstract: A data processing system includes a computing platform having a hardware processor and a memory storing a data compression software code. The hardware processor executes the data compression software code to receive a series of compression input data and encode a first compression input data of the series to a latent space representation of the first compression input data. The data compression software code further decodes the latent space representation to produce an input space representation of the first compression input data corresponding to the latent space representation, and generates f refined latent values for re-encoding the first compression input data based on a comparison of the first compression input data with its input space representation. The data compression software code then re-encodes the first compression input data using the refined latent values to produce a first compressed data corresponding to the first compression input data.Type: ApplicationFiled: May 15, 2019Publication date: November 19, 2020Inventors: Christopher Schroers, Simon Meierhans, Joaquim Campos, Jared McPhillen, Abdelaziz Djelouah, Erika Varis Doggett, Scott Labrozzi, Yuanyi Xue
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Patent number: 10832383Abstract: Systems and methods for distortion removal at multiple quality levels are disclosed. In one embodiment, a method may include receiving training content. The training content may include original content, reconstructed content, and training distortion quality levels corresponding to the reconstructed content. The reconstructed content may be derived from distorted original content. The method may also include training distortion quality levels corresponding to the reconstructed content. The method may further include receiving an initial distortion removal model. The method may include generating a conditioned distortion removal model by training the initial distortion removal model using the training content. The method may further include storing the conditioned distortion removal model.Type: GrantFiled: October 22, 2018Date of Patent: November 10, 2020Assignee: DISNEY ENTERPRISES, INC.Inventors: Christopher Schroers, Mauro Bamert, Erika Doggett, Jared McPhillen, Scott Labrozzi, Romann Weber
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Publication number: 20200226797Abstract: Systems and methods for predicting a target set of pixels are disclosed. In one embodiment, a method may include obtaining target content. The target content may include a target set of pixels to be predicted. The method may also include convolving the target set of pixels to generate an estimated set of pixels. The method may include matching a second set of pixels in the target content to the target set of pixels. The second set of pixels may be within a distance from the target set of pixels. The method may include refining the estimated set of pixels to generate a refined set of pixels using a second set of pixels in the target content.Type: ApplicationFiled: January 16, 2019Publication date: July 16, 2020Applicant: Disney Enterprises, Inc.Inventors: Christopher Schroers, Erika Doggett, Stephan Marcel Mandt, Jared McPhillen, Scott Labrozzi, Romann Weber, Mauro Bamert