Title :
Gradient-Angular-Features for Word-wise Video Script Identification
Author :
Shivakumara, P. ; Sharma, N. ; Pal, U. ; Blumenstein, M. ; Chew Lim Tan
Author_Institution :
Fac. of Comput. Sci., Univ. of Malaya, Kuala Lumpur, Malaysia
Abstract :
Script identification at the word level is challenging because of complex backgrounds and low resolution of video. The presence of graphics and scene text in video makes the problem more challenging. In this paper, we employ gradient angle segmentation on words from video text lines. This paper presents new Gradient-Angular-Features (GAF) for video script identification, namely, Arabic, Chinese, English, Japanese, Korean and Tamil. This work enables us to select an appropriate OCR when the frame has words of multi-scripts. We employ gradient directional features for segmenting words from video text lines. For each segmented word, we study the gradient information in effective ways to identify text candidates. The skeleton of the text candidates is analyzed to identify Potential Text Candidates (PTC) by filtering out unwanted text candidates. We propose novel GAF for the PTC to study the structure of the components in the form of cursiveness and softness. The histogram operation on the GAF is performed in different ways to obtain discriminative features. The method is evaluated on 760 words of six scripts having low contrast, complex background, different font sizes, etc. in terms of the classification rate and is compared with an existing method to show the effectiveness of the method. We achieve 88.2% average classification rate.
Keywords :
feature extraction; filtering theory; image resolution; image segmentation; natural language processing; text detection; video signal processing; Arabic script; Chinese script; English script; GAF; Japanese script; Korean script; OCR; PTC identification; Tamil script; average classification rate; complex backgrounds; cursiveness; discriminative features; gradient angle segmentation; gradient directional features; gradient information; gradient-angular-features; graphics; histogram operation; low-resolution video; multiscript words; potential text candidate identification; scene text; softness; text candidate skeleton; unwanted text candidate filtering; video text lines; word level; word segmentation; word-wise video script identification; Equations; Feature extraction; Histograms; Mathematical model; Pattern recognition; Shape; Support vector machine classification; Gradient words; Gradient-Angular-Features; Potential text candidates; Text candidates; Video script identification; Video words;
Conference_Titel :
Pattern Recognition (ICPR), 2014 22nd International Conference on
Conference_Location :
Stockholm
DOI :
10.1109/ICPR.2014.534