Document image analysis

  • Teaching

    Details

    Faculty Faculty of Science and Medicine
    Domain Computer Science
    Code UE-SIN.08617
    Languages English
    Type of lesson Lecture
    Level Master
    Semester SP-2022

    Schedules and rooms

    Summary schedule Tuesday 11:15 - 15:00, Hebdomadaire (Spring semester)
    Struct. of the schedule 3h par semaine durant 14 semaines
    Contact's hours 42

    Teaching

    Responsibles
    • Ingold Rolf
    Teachers
    • Ingold Rolf
    Description

    Document Image Analysis (DIA) is a cross-domain of computer vision and pattern recognition and refers to an established research field dealing with the extraction of any kind of exploitable information from document images. Printed and handwritten text recognition, known as OCR/ICR (Optical/Intelligent Character recognition), is part of the discipline, but represents only one aspect. Other challenging topics include document classification, layout analysis, writer identification/authentication, signature recognition, table recognition, logical structure recognition, etc.

    The aim of the Master course is to provide an overview of methods, from basic image processing to machine learning, which are described in the scientific literature to address different steps of DIA; this includes image binarization, page segmentation, graphics/text separation, text bock and text line detection, feature extraction and classification (at various levels). As a practical exercise, students will be asked to do a project (either individually or within a group of max. 4 peoples), which addresses a specific DIA challenge, including potentially the participation to international competitions.

     

    Training objectives

    - get a good overview of the DIA research domain
    - get a deep understanding of the processing chains involved in DIA applications
    - apply a rigorous methodology to design, implement, and evaluate a scientific experiment

     

    Comments

    MSc-CS BENEFRI - (Code Ue: 33107/ Track: T3, Code Ue: 63107/ Track: T6) The exact date and time of this course as well as the complete course list can be found at http://mcs.unibnf.ch/.

    Softskills No
    Off field No
    BeNeFri Yes
    Mobility Yes
    UniPop No
  • Dates and rooms
    Date Hour Type of lesson Place
    22.02.2022 11:15 - 15:00 Cours PER 21, Room B205
    01.03.2022 11:15 - 15:00 Cours PER 21, Room B205
    08.03.2022 11:15 - 15:00 Cours PER 21, Room B205
    22.03.2022 11:15 - 15:00 Cours PER 21, Room B205
    29.03.2022 11:15 - 15:00 Cours PER 21, Room B205
    05.04.2022 11:15 - 15:00 Cours PER 21, Room B205
    12.04.2022 11:15 - 15:00 Cours PER 21, Room B205
    26.04.2022 11:15 - 15:00 Cours PER 21, Room B205
    03.05.2022 11:15 - 15:00 Cours PER 21, Room B205
    10.05.2022 11:15 - 15:00 Cours PER 21, Room B205
    17.05.2022 11:15 - 15:00 Cours PER 21, Room B205
    24.05.2022 11:15 - 15:00 Cours PER 21, Room B205
    31.05.2022 11:15 - 15:00 Cours PER 21, Room B205
  • Assessments methods

    Examen

    Assessments methods By rating
  • Assignment
    Valid for the following curricula:
    Additional Courses in Sciences
    Version: ens_compl_sciences
    Paquet indépendant des branches > Specialized courses in Computer Science (Master level)

    Additional programme requirements for PhD studies [PRE-DOC]
    Version: 2020_1/v_01
    Additional programme requirements for PhD studies (Faculty of Science and Medicine) > Specialized courses in Computer Science (Master level)

    Computer Science [3e cycle]
    Version: 2015_1/V_01
    Continuing education > Specialized courses in Computer Science (Master level)

    Computer Science [POST-DOC]
    Version: 2015_1/V_01
    Continuing education > Specialized courses in Computer Science (Master level)

    MSc in Computer science (BeNeFri)
    Version: 2023_1/V_01
    MSc in Computer science (BeNeFri), lectures, seminars and Master thesis > T3 : Visual Computing
    MSc in Computer science (BeNeFri), lectures, seminars and Master thesis > T6: Data Science

    Ma - Business Communication : Business Informatics - 90 ECTS
    Version: 2020/SA_V02
    Courses - 60 ECTS > Option Group > Information Management > Cours > Module Informatik > Data Science
    Courses - 60 ECTS > Option Group > Information Management > Cours > Module Informatik > Visual Computing

    Ma - Business Informatics - 90 ECTS
    Version: 2020/SA-v01
    Classes - min. 45 ECTS > Module IT and IT Management > Visual Computing
    Classes - min. 45 ECTS > Module IT and IT Management > Data Science

    MiMa - Business Informatics - 30 ECTS
    Version: 2020/SA_V01
    Cours > Module Informatik > Data Science
    Cours > Module Informatik > Visual Computing

    MiMa - Data Analytics - 30 ECTS
    Version: 2020/SA-v01
    À choix 9 crédits ECTS > Data Science