상세 보기
- Kim K.C.;
- Byun H.R.;
- Song Y.J.;
- Choi Y.W.;
- Chi S.Y.;
- 외 2명
WEB OF SCIENCE
0SCOPUS
78초록
We propose a method that extracts text regions in natural scene images using low-level image features and that verifies the extracted regions through a high-level text stroke feature. Then the two level features are combined hierarchically. The low-level features are color continuity, gray-level variation and color variance. The color continuity is used since most of the characters in a text region have the same color, and the gray-level variation is used since the text strokes are distinctive to the background in their gray-level values. Also, the color variance is used since the text strokes are distinctive in their colors to the background, and this value is more sensitive than the gray-level variations. As a high level feature, text stroke is examined using multi-resolution wavelet transforms on local image areas and the feature vector is input to a SVM(Support Vector Machine) for verification. We tested the proposed method with various kinds of the natural scene images and confirmed that extraction rates are high even in complex images.
키워드
- 제목
- Scene text extraction in natural scene images using hierarchical feature combining and verification
- 저자
- Kim K.C.; Byun H.R.; Song Y.J.; Choi Y.W.; Chi S.Y.; Kim K.K.; Chung Y.K.
- 발행일
- 2004-09
- 유형
- Conference Paper
- 저널명
- Proceedings - International Conference on Pattern Recognition
- 권
- 2
- 페이지
- 679 ~ 682