Baseline Dependent Percentile Features for Offline Arabic Handwriting Recognition
Handwritten text in Arabic and other languages exhibit significant variations in the slant and baseline of characters across words and also within a single word. Since the concept of baseline does not have a precise mathematical definition, existing approaches use heuristic methods to first identify a set of baseline relevant pixels and then fit lines/curves through them. However, for statistical features like percentiles that we use in our system, we only need an approximate curve that is close to the baseline to normalize the features. Hence we propose a two stage approach to estimate the approximate baseline. First we segment the text line into a set of components, and then estimate the baseline in each component using two methods -max projection and smoothed centroid line.We incorpate the computed baseline into percentile feature computation in the BBN Byblos OCR system for an Arabic offline handwriting recognition task. Our new features, result in a 1% absolute gain and 3.1% relative gain in the word error rate on a large test set with 15K handwritten Arabic words, which is statistically significant with p-value<0.001 using the matched pair comparison test. Further, our results show that computing fine-grained baselines from small line segments is significantly better than estimating a single baseline over the entire text line.
Pradeep Natarajan David Belanger Rohit Prasad Matin Kamali Krishna Subramanian Prem Natarajan
Raytheon BBN Technologies 10 Moulton Street, Cambridge, MA 02138, USA
国际会议
北京
英文
329-333
2011-09-01(万方平台首次上网日期,不代表论文的发表时间)