Custom cover image
Custom cover image

Raspberry Pi-Based Multipurpose Optical Mark Recognition (OMR) Scanner / MarkRoger L. Cabadsan and Chrysolite A. Nocon.

By: Contributor(s): Material type: TextPublication details: Rosario, Cavite : Cavite State University-CCAT Campus, 2018Description: xiii, 70 leaves : illustrations ; 28 cmSubject(s): LOC classification:
  • UM QA 76.9.S63 C33 2018
Summary: CABADSAN, MARK ROGER L., NOCON, CHRYSOLITE A. Raspberry Pi-Based Multipurpose Optical Mark Recognition (OMR) Scanner. Design Project. Department of Engineering. Cavite State University-Cavite College of Arts and Trades Campus, Rosario, Cavite. June 2018. Adviser: Engr. John Michael A. Dharma. Mr. Karlo Jose K. Nabablit. The study was conducted from August 2017 to June 2018 in order to design and develop a Raspberry Pi-based Multipurpose Optical Mark Recognition (OMR) Scanner for Cavite State University Cavite College of Arts and Trades (CCAT) that can automate the assessment of the Student Evaluation for Teachers (SET) and canvassing of Central Student Government (CSG) election votes. Specifically, the study aimed to: 1) design and develop a standalone Raspberry Pi-based OMR scanning device that is able of performing recognition, acquisition, storage and processing of all the necessary data or information and automatically assess and produce appropriate results; 2) evaluate the prototype technical performance in terms of accuracy, process time and over-all functionality; and 3) conduct a cost analysis of the research. Parameters measured are — 1) number of successful recognition per set, 2) number of accurate recognition per set and 3) process time per each cycle (seconds). These data were gathered to determine the probability of successful recognition, probability of producing an accurate result and the average processing time per cycle. The data were analyzed and the results showed that the Raspberry Pi-based Multipurpose Optical Mark Recognition (OMR) Scanner were able to automate the canvassing of CSG election votes and SET effectively and efficiently.
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Cover image Item type Current library Home library Collection Shelving location Call number Materials specified Vol info URL Copy number Status Notes Date due Barcode Item holds Item hold queue priority Course reserves
Thesis/Manuscripts/Dissertations Cavite State University - CCAT Campus Thesis/Manuscript/Dissertation TH UM QA 76.9.S63 C33 2018 (Browse shelf(Opens below)) 1 copy Available T0004205

Design Project (BSCpE)--Cavite State University-CCAT Campus, 2018.

Includes bibliographical references and appendices.

CABADSAN, MARK ROGER L., NOCON, CHRYSOLITE A. Raspberry Pi-Based Multipurpose Optical Mark Recognition (OMR) Scanner. Design Project. Department of Engineering. Cavite State University-Cavite College of Arts and Trades Campus, Rosario, Cavite. June 2018. Adviser: Engr. John Michael A. Dharma. Mr. Karlo Jose K. Nabablit.

The study was conducted from August 2017 to June 2018 in order to design and develop a Raspberry Pi-based Multipurpose Optical Mark Recognition (OMR) Scanner for Cavite State University Cavite College of Arts and Trades (CCAT) that can automate the assessment of the Student Evaluation for Teachers (SET) and canvassing of Central Student Government (CSG) election votes. Specifically, the study aimed to: 1) design and develop a standalone Raspberry Pi-based OMR scanning device that is able of performing recognition, acquisition, storage and processing of all the necessary data or information and automatically assess and produce appropriate results; 2) evaluate the prototype technical performance in terms of accuracy, process time and over-all functionality; and 3) conduct a cost analysis of the research.

Parameters measured are — 1) number of successful recognition per set, 2) number of accurate recognition per set and 3) process time per each cycle (seconds). These data were gathered to determine the probability of successful recognition, probability of producing an accurate result and the average processing time per cycle.

The data were analyzed and the results showed that the Raspberry Pi-based Multipurpose Optical Mark Recognition (OMR) Scanner were able to automate the canvassing of CSG election votes and SET effectively and efficiently.

There are no comments on this title.

to post a comment.