Patents by Inventor Will Zhuk

Will Zhuk 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: 20260203802
    Abstract: A system receives a user input including an image of an object. The system can process the image to estimate physical attributes of the object. A system can generate, using an artificial intelligence (AI) model and based on the estimated physical attributes, a product image including a synthetic item of jewelry, where the synthetic item of jewelry is not a real item of jewelry but is physically producible as a real-world item of jewelry. The system can cause display of the product image including the synthetic item of jewelry. The system receives another user input to purchase the real-world item of jewelry. In response, the system initiates a process to manufacture the real-world item of jewelry based on the synthetic item of jewelry included in the product image.
    Type: Application
    Filed: March 12, 2026
    Publication date: July 16, 2026
    Inventors: Andrew Carr, Hakan Gunturkun, Sida Li, Mariam Naficy, Will Zhuk
  • Patent number: 12682384
    Abstract: The disclosed technology includes a computer-implemented technique for predicting or estimating physical attributes of products depicted in images is disclosed. The method includes receiving one or more images—either photographs of real-world products or synthetic images generated from user-provided descriptions—processing the images using one or more machine learning (ML) models trained to detect and measure physical characteristics, and predicting or estimating measures such as volume, weight, and dimensions. The system can identify product categories, select appropriate ML models, and generate natural language descriptions of predicted attributes for user display. Training datasets may include both real and synthetic images with known attributes, and user feedback can be incorporated to improve model accuracy.
    Type: Grant
    Filed: May 23, 2025
    Date of Patent: July 14, 2026
    Assignee: ARCADE STUDIO, INC.
    Inventors: Andrew Carr, Hakan Gunturkun, Sida Li, Mariam Naficy, Will Zhuk
  • Patent number: 12664573
    Abstract: The disclosed technology includes a computer-implemented technique for generating images of physically producible products in response to user input describing a conceptual product. The system receives user input—such as natural language text, speech, or images—via a user interface, configures a prompt for a generative artificial intelligence (AI) system, and generates an image representing a version of the conceptual product with distinct physical attributes. Each version is associated with a unique identifier, enabling selection, modification, and purchase of the conceptual product. The system supports multiple product categories, including jewelry, home décor, and fashion, and extracts physical attributes to determine manufacturability and pricing. User feedback is incorporated to improve AI performance. The invention enables presentation of selectable product versions and initiates manufacturing processes based on user selections, supporting unstructured user input and multiple data modalities.
    Type: Grant
    Filed: May 23, 2025
    Date of Patent: June 23, 2026
    Assignee: ARCADE STUDIO, INC.
    Inventors: Andrew Carr, Hakan Gunturkun, Sida Li, Mariam Naficy, Will Zhuk
  • Patent number: 12664574
    Abstract: The disclosed technology includes a computer-implemented technique for generating images of synthetic products that are manufacturable as physical products is disclosed. The system receives user input describing a conceptual product via a user interface, including text and/or image data. Based on the input, a manufacturer-specific or general generative model is selected and provided with a text-based prompt derived from the conceptual product description. The model generates one or more images of synthetic products, each conforming to manufacturing constraints. The images are presented to the user, each optionally associated with pricing and delivery information, and represent products that are manufacturable and acquirable via the interface. The system may incorporate manufacturability analysis, quality assurance, and model training using user feedback and product data.
    Type: Grant
    Filed: May 23, 2025
    Date of Patent: June 23, 2026
    Assignee: ARCADE STUDIO, INC.
    Inventors: Andrew Carr, Hakan Gunturkun, Sida Li, Mariam Naficy, Will Zhuk
  • Publication number: 20260080187
    Abstract: The disclosed technology includes a computer-implemented technique for generating images of physically producible products in response to user input describing a conceptual product. The system receives user input—such as natural language text, speech, or images—via a user interface, configures a prompt for a generative artificial intelligence (AI) system, and generates an image representing a version of the conceptual product with distinct physical attributes. Each version is associated with a unique identifier, enabling selection, modification, and purchase of the conceptual product. The system supports multiple product categories, including jewelry, home décor, and fashion, and extracts physical attributes to determine manufacturability and pricing. User feedback is incorporated to improve AI performance. The invention enables presentation of selectable product versions and initiates manufacturing processes based on user selections, supporting unstructured user input and multiple data modalities.
    Type: Application
    Filed: May 23, 2025
    Publication date: March 19, 2026
    Inventors: Andrew Carr, Hakan Gunturkun, Sida Li, Mariam Naficy, Will Zhuk
  • Publication number: 20260080450
    Abstract: The disclosed technology includes a computer-implemented technique for predicting or estimating physical attributes of products depicted in images is disclosed. The method includes receiving one or more images—either photographs of real-world products or synthetic images generated from user-provided descriptions—processing the images using one or more machine learning (ML) models trained to detect and measure physical characteristics, and predicting or estimating measures such as volume, weight, and dimensions. The system can identify product categories, select appropriate ML models, and generate natural language descriptions of predicted attributes for user display. Training datasets may include both real and synthetic images with known attributes, and user feedback can be incorporated to improve model accuracy.
    Type: Application
    Filed: May 23, 2025
    Publication date: March 19, 2026
    Inventors: Andrew Carr, Hakan Gunturkun, Sida Li, Mariam Naficy, Will Zhuk
  • Publication number: 20260080112
    Abstract: A computer-implemented technique for preprocessing user input to generate images of synthetic products representing conceptual products includes receiving user input, including text and/or images, indicative of a conceptual product, and selecting a machine learning (ML) model from a set of models based on characteristics such as product category or maker. Image inputs can be converted to text-based descriptions, combined with text inputs, and configured as a prompt instruction for the selected ML model, incorporating constraints (e.g., material, production, cost) and user feedback. The ML model can generate one or more images of a synthetic product, which can be refined iteratively based on further feedback. The system supports recognition of known and unknown objects in images and can adapt prompt instructions accordingly. The generated images include synthetic products that are producible as physical products, enabling efficient conceptual product visualization and refinement.
    Type: Application
    Filed: May 23, 2025
    Publication date: March 19, 2026
    Inventors: Andrew Carr, Hakan Gunturkun, Sida Li, Mariam Naficy, Will Zhuk
  • Publication number: 20260080449
    Abstract: The disclosed technology includes a computer-implemented technique for generating images of synthetic products that are manufacturable as physical products is disclosed. The system receives user input describing a conceptual product via a user interface, including text and/or image data. Based on the input, a manufacturer-specific or general generative model is selected and provided with a text-based prompt derived from the conceptual product description. The model generates one or more images of synthetic products, each conforming to manufacturing constraints. The images are presented to the user, each optionally associated with pricing and delivery information, and represent products that are manufacturable and acquirable via the interface. The system may incorporate manufacturability analysis, quality assurance, and model training using user feedback and product data.
    Type: Application
    Filed: May 23, 2025
    Publication date: March 19, 2026
    Inventors: Andrew Carr, Hakan Gunturkun, Sida Li, Mariam Naficy, Will Zhuk
  • Patent number: 12579332
    Abstract: A computer-implemented technique for preprocessing user input to generate images of synthetic products representing conceptual products includes receiving user input, including text and/or images, indicative of a conceptual product, and selecting a machine learning (ML) model from a set of models based on characteristics such as product category or maker. Image inputs can be converted to text-based descriptions, combined with text inputs, and configured as a prompt instruction for the selected ML model, incorporating constraints (e.g., material, production, cost) and user feedback. The ML model can generate one or more images of a synthetic product, which can be refined iteratively based on further feedback. The system supports recognition of known and unknown objects in images and can adapt prompt instructions accordingly. The generated images include synthetic products that are producible as physical products, enabling efficient conceptual product visualization and refinement.
    Type: Grant
    Filed: May 23, 2025
    Date of Patent: March 17, 2026
    Assignee: ARCADE STUDIO, INC.
    Inventors: Andrew Carr, Hakan Gunturkun, Sida Li, Mariam Naficy, Will Zhuk