Patents Assigned to SYNTHESIS AI, INC.
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Patent number: 11475246Abstract: A system and method for training a model using a training dataset. The training dataset can be made up of only real data, only synthetic data, or any combination of synthetic data and real data. The images are segmented to define objects with known labels. The object is pasted onto backgrounds to generated synthetic datasets. The various aspects of the invention include generation of data that is used to supplement or augment real data. Labels or attributes can be automatically added to the data as it is generated. The data can be generated using seed data. The data can be generated using synthetic data. The data can be generated from any source, including the user's thoughts or memory. Using the training dataset, various domain adaptation models can be trained.Type: GrantFiled: April 2, 2020Date of Patent: October 18, 2022Assignee: SYNTHESIS AI, INC.Inventors: Sergey Nikolenko, Yashar Behzadi
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Patent number: 11475247Abstract: A system and method for training a system or a model using any combination of synthetic data and real data. The various aspects of the invention include generation of data that is used to supplement or augment real data, wherein the subject of the data can be segmented. Labels or attributes are automatically added to generated data. The generated data is synthetic data that is generated using seed or real data as well as from other synthetic data. Using the synthetic data, various domain adaptation models can be used and trained.Type: GrantFiled: April 2, 2020Date of Patent: October 18, 2022Assignee: SYNTHESIS AI, INC.Inventors: Sergey Nikolenko, Yashar Behzadi
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Patent number: 11455496Abstract: A system and method are disclosed for training a system or a model using any combination of synthetic data and real data. The various aspects of the invention include generation of data that is used to supplement or augment real data, wherein the subject of the data can be segmented. Labels or attributes are automatically added to generated data. The generated data is synthetic data that is created using the seed or real data as well as from other synthetic data. Using the synthetic data, various domain adaptation models can be used and trained for unsupervised domain adaptation.Type: GrantFiled: April 2, 2020Date of Patent: September 27, 2022Assignee: SYNTHESIS AI, INC.Inventors: Sergey Nikolenko, Yashar Behzadi
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Patent number: 11455495Abstract: A system and method are disclosed for training a model using a training dataset. The training dataset can include only real data, only synthetic data, or any combination of synthetic data and real data. The various aspects of the invention include generation of data that is used to supplement or augment real data. Labels or attributes can be automatically added to the data as it is generated. The data can be generated using seed data. The data can be generated using synthetic data. The data can be generated from any source, including the user's thoughts or memory. Using the training dataset, various domain adaptation models can be trained.Type: GrantFiled: April 2, 2020Date of Patent: September 27, 2022Assignee: SYNTHESIS AI, INC.Inventors: Sergey Nikolenko, Yashar Behzadi
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Publication number: 20200320345Abstract: A system and method are disclosed for training a model using a training dataset. The training dataset can include only real data, only synthetic data, or any combination of synthetic data and real data. The various aspects of the invention include generation of data that is used to supplement or augment real data. Labels or attributes can be automatically added to the data as it is generated. The data can be generated using seed data. The data can be generated using synthetic data. The data can be generated from any source, including the user's thoughts or memory. Using the training dataset, various domain adaptation models can be trained.Type: ApplicationFiled: April 2, 2020Publication date: October 8, 2020Applicant: SYNTHESIS AI, INC.Inventors: Sergey NIKOLENKO, Yashar BEHZADI
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Publication number: 20200320351Abstract: A system and method are disclosed for training a system or a model using any combination of synthetic data and real data. The various aspects of the invention include generation of data that is used to supplement or augment real data, wherein the subject of the data can be segmented. Labels or attributes are automatically added to generated data. The generated data is synthetic data that is generated using seed or real data as well as from other synthetic data. Using the synthetic data, various domain adaptation models can be used and trained.Type: ApplicationFiled: April 2, 2020Publication date: October 8, 2020Applicant: SYNTHESIS AI, INC.Inventors: Sergey NIKOLENKO, Yashar BEHZADI
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Publication number: 20200320347Abstract: A system and method are disclosed for training a system or a model using any combination of synthetic data and real data. The various aspects of the invention include generation of data that is used to supplement or augment real data, wherein the subject of the data can be segmented. Labels or attributes are automatically added to generated data. The generated data is synthetic data that is created using the seed or real data as well as from other synthetic data. Using the synthetic data, various domain adaptation models can be used and trained for unsupervised domain adaptation.Type: ApplicationFiled: April 2, 2020Publication date: October 8, 2020Applicant: SYNTHESIS AI, INC.Inventors: Sergey NIKOLENKO, Yashar BEHZADI
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Publication number: 20200320346Abstract: A system and method are disclosed for training a model using a training dataset. The training dataset can be made up of only real data, only synthetic data, or any combination of synthetic data and real data. The images ae segmented to define objects with known labels. The object is pasted onto backgrounds to generated synthetic datasets. The various aspects of the invention include generation of data that is used to supplement or augment real data. Labels or attributes can be automatically added to the data as it is generated. The data can be generated using seed data. The data can be generated using synthetic data. The data can be generated from any source, including the user's thoughts or memory. Using the training dataset, various domain adaptation models can be trained.Type: ApplicationFiled: April 2, 2020Publication date: October 8, 2020Applicant: SYNTHESIS AI, INC.Inventors: Sergey NIKOLENKO, Yashar BEHZADI