Here are
72 public repositories
matching this topic...
An optical music recognition (OMR) system. Converts sheet music to a machine-readable version.
Updated
May 5, 2021
Jupyter Notebook
Grade exams fast and accurately using a scanner 🖨 or your phone 🤳 .
Updated
Dec 20, 2021
Python
Optical Mark Recognition with PHP
A Lua implementation with an Eclipse OMR based JIT compiler
End-to-end OMR system based on deep learning and machine learning techniques. Transcribe on skewed, phone-taken photos.
Updated
Apr 2, 2022
Jupyter Notebook
This project is designed to allow easy creation of OMR (Optical Mark Recognition) templates and provides a bulk scanner which can be used for processing large amounts of images from a tray fed scanner.
OpenMCR: An accurate and simple exam bubble sheet reading tool. Created with OpenCV and Python.
Updated
Dec 27, 2021
Python
An android application for validating images of OMR sheets before they are sent for processing.
This project uses open cv to evaluate OMR sheets. We are trying to make this system as reliable as possible.
Updated
Feb 11, 2022
Python
Orchestra is a sheet music reader (optical music recognition (OMR) system) that converts sheet music to a machine-readable version.
Updated
Jan 18, 2021
Python
A Deep Learning based detector for measures in musical scores
Updated
Oct 6, 2021
Python
The definitive bibliography for research on Optical Music Recognition
Updated
Jul 23, 2021
HTML
Sm3ni is an Optical Musical Recognition project written in python that converts music sheets images to a text file representing the musical notes then to a .wav audio file that represents the music sheet .
Updated
Jan 28, 2021
Python
OptiGrader is an optical mark recognition (OMR) application that serves as both a scantron grader and an online gradebook.
Image Processing and Manipulation using python OpenCV
Updated
Jan 20, 2019
Python
Orchestra is a sheet music reader (optical music recognition (OMR) system) that converts sheet music to a machine-readable version.
Updated
Jan 17, 2021
Python
Theia OMR Scanner is a openCV based Optical Mark Reader (OMR) application for pre-designed and customizable MCQ bubble sheets. IIt's GUI provide a readymade bubble sheet to be used in educational institutes.
Updated
Nov 11, 2019
Visual Basic
Experiments on Linking the Nodes of a Music Notation Graph (MuNG) with Deep Learning.
Updated
May 16, 2021
Python
An easy to use OMR scanning system for grading bubble sheets.
Updated
Sep 10, 2020
Python
An OMR approach for finding signature in PDF files
Music Object Detector for Mensural Notation, as published in the ISMIR2018 paper
Updated
Jun 6, 2019
Python
.NET library for communicating with the Aspose.OMR Cloud API
Open source optical mark recognition (OMR) software for creating, tagging and reading bubble sheet forms. For Windows, Mac & Linux.
OMR Checker APP is an APP that will help the teachers get the results of answer sheet of the students. This will help the teacher to grade the students faster and provide faster results.
Updated
Oct 6, 2021
Python
This project is designed to create OMR templates and provides a scanner which can be used for processing large amounts of images.
Music Notation Graph: a data model for optical music recognition.
Updated
Dec 14, 2021
Python
Working repository for the MUSCIMA++ dataset
Updated
May 16, 2021
Python
OMR System which converts images of musical sheets and notes into readable text that both humans and computers can understand
Updated
Feb 3, 2021
Python
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