Staff detection and removal is one of the most important issues in optical music recognition (OMR) tasks since common approaches for symbol detection and classification are based on this process. Due to its complexity, staff detection and removal is often inaccurate, leading to a great number of errors in posterior stages. For this reason, a new approach that avoids this stage is proposed in this paper, which is expected to overcome these drawbacks. Our approach is put into practice in a case of study focused on scores written in white mensural notation. Symbol detection is performed by using the vertical projection of the staves. The cross-correlation operator for template matching is used at the classification stage. The goodness of our p...
International audienceThis paper presents an optical music recognition (OMR) system that can automat...
In this work, we present an approach for the task of optical music recognition (OMR) using deep neur...
For over 50 years, researchers have been trying to teach computers to read music notation, referred ...
Staff detection and removal is one of the most important issues in optical music recognition (OMR) t...
An Optical Music Recognition (OMR) system especially adapted for handwritten musical scores of the ...
Optical Music Recognition OMR refers to convert music scores into a machine interpretable form.Actua...
Inspired by the Text Recognition field, end-to-end schemes based on Convolutional Recurrent Neural N...
Optical music recognition (OMR ) describes the process of automatically transcribing music notation ...
Staff-line removal is an important preprocessing stage as regards most Optical Music Recognition sys...
This work presents a novel approach to tackle the music staff removal. This task is devoted to remov...
Staff-line removal is an important preprocessing stage for most optical music recognition systems. C...
The digitization of the content within musical manuscripts allows the possibility of preserving, dis...
Current software for Optical Music Recognition (OMR) produces outputs with too many errors that rend...
This paper discusses part of a larger project to preserve and increase access to Guatemalan music so...
Even today, the automatic digitisation of scanned documents in general, but especially the automatic...
International audienceThis paper presents an optical music recognition (OMR) system that can automat...
In this work, we present an approach for the task of optical music recognition (OMR) using deep neur...
For over 50 years, researchers have been trying to teach computers to read music notation, referred ...
Staff detection and removal is one of the most important issues in optical music recognition (OMR) t...
An Optical Music Recognition (OMR) system especially adapted for handwritten musical scores of the ...
Optical Music Recognition OMR refers to convert music scores into a machine interpretable form.Actua...
Inspired by the Text Recognition field, end-to-end schemes based on Convolutional Recurrent Neural N...
Optical music recognition (OMR ) describes the process of automatically transcribing music notation ...
Staff-line removal is an important preprocessing stage as regards most Optical Music Recognition sys...
This work presents a novel approach to tackle the music staff removal. This task is devoted to remov...
Staff-line removal is an important preprocessing stage for most optical music recognition systems. C...
The digitization of the content within musical manuscripts allows the possibility of preserving, dis...
Current software for Optical Music Recognition (OMR) produces outputs with too many errors that rend...
This paper discusses part of a larger project to preserve and increase access to Guatemalan music so...
Even today, the automatic digitisation of scanned documents in general, but especially the automatic...
International audienceThis paper presents an optical music recognition (OMR) system that can automat...
In this work, we present an approach for the task of optical music recognition (OMR) using deep neur...
For over 50 years, researchers have been trying to teach computers to read music notation, referred ...