Research Hub

대학 자원

대학 인프라와 자원을 공유해 공동 연구와 기술 활용을 지원합니다.

Loading...

논문 리스트

2019
Super-resolution in Music Score Images by Instance Normalization Super-resolution in Music Score Images by Instance Normalization
(사)한국스마트미디어학회
논문정보
Publisher
스마트미디어저널
Issue Date
2019-12-31
Keywords
-
Citation
-
Source
-
Journal Title
-
Volume
8
Number
4
Start Page
64
End Page
71
DOI
ISSN
22871322
Abstract
The performance of an OMR (Optical Music Recognition) system is usually determined by the characterizing features of the input music score images. Low resolution is one of the main factors leading to degraded image quality. In this paper, we handle the low-resolution problem using the super-resolution technique. We propose the use of a deep neural network with instance normalization to improve the quality of music score images. We apply instance normalization which has proven to be beneficial in single image enhancement. It works better than batch normalization, which shows the effectiveness of shifting the mean and variance of deep features at the instance level. The proposed method provides an end-to-end mapping technique between the high and low-resolution images respectively. New images are then created, in which the resolution is four times higher than the resolution of the original images. Our model has been evaluated with the dataset “DeepScores” and shows that it outperforms other existing methods.

저자 정보

이름 소속
등록된 데이터가 없습니다.