Title :
Adaptive Scene Text Detection Based on Transferring Adaboost
Author :
Song Gao ; Chunheng Wang ; Baihua Xiao ; Cunzhao Shi ; Yang Zhang ; Zhijian Lv ; Yanqin Shi
Author_Institution :
Institue of Autom., State Key Lab. of Intell. Control & Manage. of Complex Syst., Beijing, China
Abstract :
Detecting text in scene images is very challenging due to complex backgrounds, various fonts and different illumination conditions. Without prior knowledge, a detector previously trained using lots of samples still perform badly on a test image because of the disparities in distributions between the training samples and the testing ones. In this paper, we propose to adapt a pre-trained generic scene text detector towards new scenes by transfer learning. In particular, we choose cascade Adaboost as the detector style and try to re-weight pre-selected features according to their abilities to classify high confidence samples. The proposed adaptation mechanism has been evaluated on ICDAR 2011 scene text detection competition dataset and the encouraging experiments results can be compared with the latest published algorithms.
Keywords :
image classification; learning (artificial intelligence); text detection; Adaboost transfer; ICDAR 2011 scene text detection competition dataset; adaptive scene text detection; feature selection; high confidence sample classification; pretrained generic scene text detector; scene images; test image; transfer learning; Computer vision; Detectors; Feature extraction; Text analysis; Text recognition; Training;
Conference_Titel :
Document Analysis and Recognition (ICDAR), 2013 12th International Conference on
Conference_Location :
Washington, DC
DOI :
10.1109/ICDAR.2013.85