Patents by Inventor Boris Nikolaev Daskalov

Boris Nikolaev Daskalov 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: 20240071067
    Abstract: A non-transitory processor-readable medium stores instructions to be executed by a processor. The instructions cause the processor to receive a first trained machine learning model that generates a transcription based on a document. The instructions cause the processor to execute the first trained machine learning model and a second trained machine learning model to generate a refined transcription based on the transcription. The instructions cause the processor to execute a quality assurance program to generate a transcription score based on the document and the transcription. The instructions cause the processor to execute the quality assurance program to generate a refined transcription score based on the refined transcription and at least one of the document or the transcription. The at least one refined transcription score indicates an automation performance better than an automation performance for the at least one transcription score.
    Type: Application
    Filed: July 25, 2023
    Publication date: February 29, 2024
    Inventors: Stefan Iliev STEFANOV, Boris Nikolaev DASKALOV, Akhil LOHCHAB
  • Patent number: 11854251
    Abstract: A non-transitory processor-readable medium stores instructions to be executed by a processor. The instructions cause the processor to receive a first trained machine learning model that generates a transcription based on a document. The instructions cause the processor to execute the first trained machine learning model and a second trained machine learning model to generate a refined transcription based on the transcription. The instructions cause the processor to execute a quality assurance program to generate a transcription score based on the document and the transcription. The instructions cause the processor to execute the quality assurance program to generate a refined transcription score based on the refined transcription and at least one of the document or the transcription. The at least one refined transcription score indicates an automation performance better than an automation performance for the at least one transcription score.
    Type: Grant
    Filed: October 20, 2022
    Date of Patent: December 26, 2023
    Assignee: Hyper Labs, Inc.
    Inventors: Stefan Iliev Stefanov, Boris Nikolaev Daskalov, Akhil Lohchab
  • Patent number: 11610084
    Abstract: In some embodiments, a method includes training a first machine learning model based on multiple documents and multiple templates associated with the multiple documents. The method further includes executing the first machine learning model to generate multiple relevancy masks, the multiple relevancy masks to remove a visual structure of the multiple templates from a visual structure of the multiple documents. The method further includes generating multiple multichannel field images to include the multiple relevancy masks and at least one of the multiple documents or the multiple templates. The method further includes training a second machine learning model based on the multiple multichannel field images and multiple non-native texts associated with the multiple documents. The method further includes executing the second machine learning model to generate multiple non-native texts from the multiple multichannel field images.
    Type: Grant
    Filed: June 1, 2020
    Date of Patent: March 21, 2023
    Assignee: Hyper Labs, Inc.
    Inventors: Boris Nikolaev Daskalov, Daniel Biser Balchev
  • Publication number: 20230050829
    Abstract: A non-transitory processor-readable medium stores instructions to be executed by a processor. The instructions cause the processor to receive a first trained machine learning model that generates a transcription based on a document. The instructions cause the processor to execute the first trained machine learning model and a second trained machine learning model to generate a refined transcription based on the transcription. The instructions cause the processor to execute a quality assurance program to generate a transcription score based on the document and the transcription. The instructions cause the processor to execute the quality assurance program to generate a refined transcription score based on the refined transcription and at least one of the document or the transcription. The at least one refined transcription score indicates an automation performance better than an automation performance for the at least one transcription score.
    Type: Application
    Filed: October 20, 2022
    Publication date: February 16, 2023
    Applicant: Hyper Labs, Inc.
    Inventors: Stefan Iliev STEFANOV, Boris Nikolaev DASKALOV, Akhil LOHCHAB
  • Patent number: 11481691
    Abstract: A non-transitory processor-readable medium stores instructions to be executed by a processor. The instructions cause the processor to receive a first trained machine learning model that generates a transcription based on a document. The instructions cause the processor to execute the first trained machine learning model and a second trained machine learning model to generate a refined transcription based on the transcription. The instructions cause the processor to execute a quality assurance program to generate a transcription score based on the document and the transcription. The instructions cause the processor to execute the quality assurance program to generate a refined transcription score based on the refined transcription and at least one of the document or the transcription. The at least one refined transcription score indicates an automation performance better than an automation performance for the at least one transcription score.
    Type: Grant
    Filed: January 16, 2020
    Date of Patent: October 25, 2022
    Assignee: Hyper Labs, Inc.
    Inventors: Stefan Iliev Stefanov, Boris Nikolaev Daskalov, Akhil Lohchab
  • Publication number: 20210224695
    Abstract: A non-transitory processor-readable medium stores instructions to be executed by a processor. The instructions cause the processor to receive a first trained machine learning model that generates a transcription based on a document. The instructions cause the processor to execute the first trained machine learning model and a second trained machine learning model to generate a refined transcription based on the transcription. The instructions cause the processor to execute a quality assurance program to generate a transcription score based on the document and the transcription. The instructions cause the processor to execute the quality assurance program to generate a refined transcription score based on the refined transcription and at least one of the document or the transcription. The at least one refined transcription score indicates an automation performance better than an automation performance for the at least one transcription score.
    Type: Application
    Filed: January 16, 2020
    Publication date: July 22, 2021
    Inventors: Stefan Iliev STEFANOV, Boris Nikolaev DASKALOV, Akhil LOHCHAB
  • Patent number: 10671892
    Abstract: In some embodiments, a method includes training a first machine learning model based on multiple documents and multiple templates associated with the multiple documents. The method further includes executing the first machine learning model to generate multiple relevancy masks, the multiple relevancy masks to remove a visual structure of the multiple templates from a visual structure of the multiple documents. The method further includes generating multiple multichannel field images to include the multiple relevancy masks and at least one of the multiple documents or the multiple templates. The method further includes training a second machine learning model based on the multiple multichannel field images and multiple non-native texts associated with the multiple documents. The method further includes executing the second machine learning model to generate multiple non-native texts from the multiple multichannel field images.
    Type: Grant
    Filed: November 5, 2019
    Date of Patent: June 2, 2020
    Assignee: Hyper Labs, Inc.
    Inventors: Boris Nikolaev Daskalov, Daniel Biser Balchev
  • Patent number: 9236056
    Abstract: Implementations are provided herein relating to audio matching. A variable length local sensitivity hash (“LSH”) index can be created through a careful examination of existing LSH bands in the LSH index. LSH bands with offset lists that meet a band size threshold can be lengthened repeatedly until a maximum length threshold is reached or an offset list associated with a lengthened LSH band fails to meet the band size threshold. The LSH index can be further tuned by down-sampling or discarding LSH bands that reach a maximum length threshold and still lack discriminate properties.
    Type: Grant
    Filed: August 13, 2013
    Date of Patent: January 12, 2016
    Assignee: Google Inc.
    Inventors: Boris Nikolaev Daskalov, Gheorghe Postelnicu