Research Hub

대학 자원

대학 인프라와 자원을 공유해 공동 연구와 기술 활용을 지원합니다.

Loading...

논문 리스트

2017
Text Detection based on Edge Enhanced Contrast Extremal Region and Tensor Voting in Natural Scene Images Text Detection based on Edge Enhanced Contrast Extremal Region and Tensor Voting in Natural Scene Images
(사)한국스마트미디어학회
김수형, 양형정 외 1명
논문정보
Publisher
스마트미디어저널
Issue Date
2017-12-31
Keywords
-
Citation
-
Source
-
Journal Title
-
Volume
6
Number
4
Start Page
32
End Page
40
DOI
ISSN
22871322
Abstract
In this paper, a robust text detection method based on edge enhanced contrasting extremal region (CER) is proposed using stroke width transform (SWT) and tensor voting. First, the edge enhanced CER extracts a number of covariant regions, which is a stable connected component from input images. Next, SWT is created by the distance map, which is used to eliminate non-text regions. Then, these candidate text regions are verified based on tensor voting, which uses the input center point in the previous step to compute curve salience values. Finally, the connected component grouping is applied to a cluster closed to characters. The proposed method is evaluated with the ICDAR2003 and ICDAR2013 text detection competition datasets and the experiment results show high accuracy compared to previous methods.

저자 정보

이름 소속
김수형 인공지능학부
양형정 인공지능융합학과