Patents by Inventor Pierre-Michel Lallican

Pierre-Michel Lallican 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: 20230230404
    Abstract: A method for recognizing handwritten text is disclosed. The method comprises receiving data comprising a sequence of ink points; applying the received data to a neural network-based sequence classifier trained with a Connectionist Temporal Classification (CTC) output layer using forced alignment to generate an output; generating a character hypothesis as a portion of the sequence of ink points; applying the character hypothesis to a character classifier to obtain a first probability corresponding to the probability that the character hypothesis includes the given character; processing the output of the CTC output layer to determine a second probability corresponding to the probability that the given character is observed within the character hypothesis; and combining the first probability and the second probability to obtain a combined probability corresponding to the probability that the character hypothesis includes the given character.
    Type: Application
    Filed: May 11, 2021
    Publication date: July 20, 2023
    Inventors: Gaƫl MANSON, Guillermo ARADILLA, Cyril CEROVIC, Pierre-Michel LALLICAN
  • Publication number: 20230084641
    Abstract: The invention relates to a method implemented by a computing device for processing math and text in handwriting, comprising: identifying symbols by performing handwriting recognition on a plurality of strokes; classifying, as a first classification, first symbols as either a text symbol candidate or a math symbol candidate with a confidence score reaching a first threshold; classifying, as a second classification, second symbols other than first symbols as either a text symbol candidate or a math symbol candidate with a respective confidence score by applying predefined spatial syntactic rules; updating or confirming, as a third classification, a result of the second classification by establishing semantic connections between symbols and comparing the semantic connections with the result of the second classification; and recognising each symbol as either text or math based on a result of said third classification.
    Type: Application
    Filed: January 27, 2021
    Publication date: March 16, 2023
    Inventors: Udit ROY, Pierre-Michel LALLICAN, Robin MELINAND
  • Patent number: 10007859
    Abstract: A system and method that is able to recognize a user's natural superimposed handwriting without any explicit separation between characters. The system and method is able to process single-stroke and multi-stroke characters. It can also process cursive handwriting. Further, the method and system can determine the boundaries of input words either by the use of a specific user input gesture or by detecting the word boundaries based on language characteristics and properties. The system and method analyzes the handwriting input through the processes of fragmentation, segmentation, character recognition, and language modeling. At least some of these processes occur concurrently through the use of dynamic programming.
    Type: Grant
    Filed: March 28, 2016
    Date of Patent: June 26, 2018
    Assignee: MyScript
    Inventors: Zsolt Wimmer, Freddy Perraud, Pierre-Michel Lallican, Guillermo Aradilla
  • Patent number: 9911052
    Abstract: A system and method is able to recognize a user's natural superimposed handwriting without any explicit separation between characters. The system and method is able to process single-stroke and multi-stroke characters. The system and method can also process cursive handwriting. Further, the system and method can determine the boundaries of input words either by the use of a specific user input gesture or by detecting the word boundaries based on language characteristics and properties. The system and method analyzes the handwriting input through the processes of segmentation, character recognition, and language modeling. These three processes occur concurrently through the use of dynamic programming.
    Type: Grant
    Filed: November 16, 2016
    Date of Patent: March 6, 2018
    Assignee: MYSCRIPT
    Inventors: Zsolt Wimmer, Freddy Perraud, Pierre-Michel Lallican
  • Patent number: 9875254
    Abstract: A method for searching for at least one term, consisting of at least one character, in at least one set of ink data is disclosed. This method advantageously includes an operation for converting ink data into intermediate data, in an intermediate format, in the form of at least one segmentation graph, each node of one of the graphs including at least one ink segment associated with at least one assumption of correspondence with a recognition unit, and an operation for searching for the term or terms, carried out on the intermediate data, the conversion operation being carried out once and for all during storage of one of the sets of data, and the search operation being capable of being carried out at any time.
    Type: Grant
    Filed: January 10, 2006
    Date of Patent: January 23, 2018
    Assignee: MYSCRIPT
    Inventor: Pierre-Michel Lallican
  • Patent number: 9711117
    Abstract: Disclosed are music symbol recognition apparatuses and methods that recognise music symbols from handwritten music notations. Various implementations may process handwritten music notations by segmenting the handwritten music notations into a plurality of elementary ink segments and then grouping the segments into graphical objects based on spatial relationships between the segments. One or more candidate music symbols may be determined for each graphical object, along with a symbol cost for each symbol, which represents a likelihood that the graphical object belongs to a predetermined class of symbols. The music symbol candidates may be parsed to form graphs based on grammar rules, and the graph most likely to represent the handwritten music notations may be selected for display or other use. The selection may be based on the symbol costs associated with each candidate and on spatial costs associated with the grammar rules that are applied to the candidates.
    Type: Grant
    Filed: July 13, 2016
    Date of Patent: July 18, 2017
    Assignee: MYSCRIPT
    Inventors: Fabio Valente, Pierre-Michel Lallican
  • Publication number: 20170061223
    Abstract: A system and method is able to recognize a user's natural superimposed handwriting without any explicit separation between characters. The system and method is able to process single-stroke and multi-stroke characters. The system and method can also process cursive handwriting. Further, the system and method can determine the boundaries of input words either by the use of a specific user input gesture or by detecting the word boundaries based on language characteristics and properties. The system and method analyzes the handwriting input through the processes of segmentation, character recognition, and language modeling. These three processes occur concurrently through the use of dynamic programming.
    Type: Application
    Filed: November 16, 2016
    Publication date: March 2, 2017
    Inventors: Zsolt WIMMER, Freddy PERRAUD, Pierre-Michel LALLICAN
  • Patent number: 9524440
    Abstract: A system and method that is able to recognize a user's natural superimposed handwriting without any explicit separation between characters. The system and method is able to process single-stroke and multi-stroke characters. It can also process cursive handwriting. Further, the method and system can determine the boundaries of input words either by the use of a specific user input gesture or by detecting the word boundaries based on language characteristics and properties. The system and method analyzes the handwriting input through the processes of segmentation, character recognition, and language modeling. These three processes occur concurrently through the use of dynamic programming.
    Type: Grant
    Filed: April 4, 2014
    Date of Patent: December 20, 2016
    Assignee: MYSCRIPT
    Inventors: Zsolt Wimmer, Freddy Perraud, Pierre-Michel Lallican
  • Publication number: 20160322038
    Abstract: Disclosed are music symbol recognition apparatuses and methods that recognise music symbols from handwritten music notations. Various implementations may process handwritten music notations by segmenting the handwritten music notations into a plurality of elementary ink segments and then grouping the segments into graphical objects based on spatial relationships between the segments. One or more candidate music symbols may be determined for each graphical object, along with a symbol cost for each symbol, which represents a likelihood that the graphical object belongs to a predetermined class of symbols. The music symbol candidates may be parsed to form graphs based on grammar rules, and the graph most likely to represent the handwritten music notations may be selected for display or other use. The selection may be based on the symbol costs associated with each candidate and on spatial costs associated with the grammar rules that are applied to the candidates.
    Type: Application
    Filed: July 13, 2016
    Publication date: November 3, 2016
    Inventors: Fabio Valente, Pierre-Michel Lallican
  • Publication number: 20160275364
    Abstract: A system and method that is able to recognize a user's natural superimposed handwriting without any explicit separation between characters. The system and method is able to process single-stroke and multi-stroke characters. It can also process cursive handwriting. Further, the method and system can determine the boundaries of input words either by the use of a specific user input gesture or by detecting the word boundaries based on language characteristics and properties. The system and method analyzes the handwriting input through the processes of fragmentation, segmentation, character recognition, and language modeling. At least some of these processes occur concurrently through the use of dynamic programming.
    Type: Application
    Filed: March 28, 2016
    Publication date: September 22, 2016
    Inventors: Zsolt WIMMER, Freddy Perraud, Pierre-Michel Lallican, Guillermo Aradilla
  • Patent number: 9424823
    Abstract: Disclosed are music symbol recognition apparatuses and methods that recognize music symbols from handwritten music notations. Various implementations may process handwritten music notations by segmenting the handwritten music notations into a plurality of elementary ink segments and then grouping the segments into graphical objects based on spatial relationships between the segments. One or more candidate music symbols may be determined for each graphical object, along with a symbol cost for each symbol, which represents a likelihood that the graphical object belongs to a predetermined class of symbols. The music symbol candidates may be parsed to form graphs based on grammar rules, and the graph most likely to represent the handwritten music notations may be selected for display or other use. The selection may be based on the symbol costs associated with each candidate and on spatial costs associated with the grammar rules that are applied to the candidates.
    Type: Grant
    Filed: February 10, 2014
    Date of Patent: August 23, 2016
    Assignee: MYSCRIPT
    Inventors: Fabio Valente, Pierre-Michel Lallican
  • Patent number: 9384403
    Abstract: A system and method that is able to recognize a user's natural superimposed handwriting without any explicit separation between characters. The system and method is able to process single-stroke and multi-stroke characters. It can also process cursive handwriting. Further, the method and system can determine the boundaries of input words either by the use of a specific user input gesture or by detecting the word boundaries based on language characteristics and properties. The system and method analyzes the handwriting input through the processes of fragmentation, segmentation, character recognition, and language modeling. At least some of these processes occur concurrently through the use of dynamic programming.
    Type: Grant
    Filed: July 10, 2015
    Date of Patent: July 5, 2016
    Assignee: MYSCRIPT
    Inventors: Zsolt Wimmer, Freddy Perraud, Pierre-Michel Lallican, Guillermo Aradilla
  • Publication number: 20150356360
    Abstract: A system and method that is able to recognize a user's natural superimposed handwriting without any explicit separation between characters. The system and method is able to process single-stroke and multi-stroke characters. It can also process cursive handwriting. Further, the method and system can determine the boundaries of input words either by the use of a specific user input gesture or by detecting the word boundaries based on language characteristics and properties. The system and method analyzes the handwriting input through the processes of fragmentation, segmentation, character recognition, and language modeling. At least some of these processes occur concurrently through the use of dynamic programming.
    Type: Application
    Filed: July 10, 2015
    Publication date: December 10, 2015
    Inventors: Zsolt WIMMER, Freddy PERRAUD, Pierre-Michel LALLICAN, Guillermo ARADILLA
  • Publication number: 20150286886
    Abstract: A system and method that is able to recognize a user's natural superimposed handwriting without any explicit separation between characters. The system and method is able to process single-stroke and multi-stroke characters. It can also process cursive handwriting. Further, the method and system can determine the boundaries of input words either by the use of a specific user input gesture or by detecting the word boundaries based on language characteristics and properties. The system and method analyzes the handwriting input through the processes of segmentation, character recognition, and language modeling. These three processes occur concurrently through the use of dynamic programming.
    Type: Application
    Filed: April 4, 2014
    Publication date: October 8, 2015
    Inventors: Zsolt Wimmer, Freddy Perraud, Pierre-Michel Lallican
  • Publication number: 20150228259
    Abstract: Disclosed are music symbol recognition apparatuses and methods that recognise music symbols from handwritten music notations. Various implementations may process handwritten music notations by segmenting the handwritten music notations into a plurality of elementary ink segments and then grouping the segments into graphical objects based on spatial relationships between the segments. One or more candidate music symbols may be determined for each graphical object, along with a symbol cost for each symbol, which represents a likelihood that the graphical object belongs to a predetermined class of symbols. The music symbol candidates may be parsed to form graphs based on grammar rules, and the graph most likely to represent the handwritten music notations may be selected for display or other use. The selection may be based on the symbol costs associated with each candidate and on spatial costs associated with the grammar rules that are applied to the candidates.
    Type: Application
    Filed: February 10, 2014
    Publication date: August 13, 2015
    Inventors: Fabio Valente, Pierre-Michel Lallican
  • Publication number: 20090077053
    Abstract: Method for searching for at least one term, consisting of at least one character, in at least one set (101) of ink data. According to the invention, a method such as this advantageously includes an operation for converting (112, 113) ink data (101) into intermediate data (102), in an intermediate format, in the form of at least one segmentation graph, each node of one of the graphs including at least one ink segment associated with at least one assumption of correspondence with a recognition unit, and an operation (106) for searching for the term or terms, carried out on the intermediate data, the conversion operation being carried out once and for all during storage of one of the sets of data, and the search operation (106) being capable of being carried out at any time.
    Type: Application
    Filed: January 10, 2006
    Publication date: March 19, 2009
    Applicant: VISION OBJECTS
    Inventor: Pierre-Michel Lallican