@inbook{c904742b68cd4df4a140310c6055579f,
title = "Writer Identification in Old Music Manuscripts Using Contour-Hinge Feature and Dimensionality Reduction with an Autoencoder: Computer Analysis of Images and Patterns",
abstract = "Although most of the previous studies in writer identification in music scores assumed successful prior staff-line removal, this assumption does not hold when the music scores suffer from a certain level of degradation or deformation. The impact of staff-line removal on the result of writer identification in such documents is rather vague. In this study, we propose a novel writer identification method that requires no staff-line removal and no segmentation. Staff-line removal is virtually achieved without image processing, by dimensionality reduction with an autoencoder in Contour-Hinge feature space. The experimental result with a wide range of music manuscripts shows the proposed method can achieve favourable results without prior staff-line removal.",
author = "Masahiro Niitsuma and Lambertus Schomaker and \{van Oosten\}, Jean-Paul and Yo Tomita",
year = "2013",
doi = "10.1007/978-3-642-40246-3\_69",
language = "English",
isbn = "978-3-642-40245-6",
series = "Lecture Notes in Computer Science",
publisher = "Springer",
pages = "555--562",
editor = "Richard Wilson and Edwin Hancock and Adrian Bors and William Smith",
booktitle = "Computer Analysis of Images and Patterns; part 2",
}