TY - GEN
T1 - Handwritten Arabic text recognition using Deep Belief Networks
AU - Porwal, Utkarsh
AU - Zhou, Yingbo
AU - Govindaraju, Venu
PY - 2012
Y1 - 2012
N2 - Offline Arabic handwritten text recognition task exhibits high variations in observed variables such as size, loops, slant and continuity. Learning algorithm tries to capture the statistical dependence between these variables but often fails to learn the complete distribution because of their large degree-of-freedom. However, it is possible to output a good hypothesis if either data samples for training are sufficient or features representing the data are rich enough to learn the highly non linear target function. Number of training samples are generally limited in case of handwritten scripts ruling out the first option. Therefore, in this work we propose a method to represent data in a more informative manner that enables learning algorithm to approximate the actual target function despite limited training data samples. We use Deep Belief Networks which incrementally learns complex structure of the data by representing it in a more compact and abstract manner. We use publically available AMA PAW dataset to show the efficacy of our method and significant improvement over state-of-the-art methods is reported.
AB - Offline Arabic handwritten text recognition task exhibits high variations in observed variables such as size, loops, slant and continuity. Learning algorithm tries to capture the statistical dependence between these variables but often fails to learn the complete distribution because of their large degree-of-freedom. However, it is possible to output a good hypothesis if either data samples for training are sufficient or features representing the data are rich enough to learn the highly non linear target function. Number of training samples are generally limited in case of handwritten scripts ruling out the first option. Therefore, in this work we propose a method to represent data in a more informative manner that enables learning algorithm to approximate the actual target function despite limited training data samples. We use Deep Belief Networks which incrementally learns complex structure of the data by representing it in a more compact and abstract manner. We use publically available AMA PAW dataset to show the efficacy of our method and significant improvement over state-of-the-art methods is reported.
UR - https://www.scopus.com/pages/publications/84874567405
M3 - Conference contribution
AN - SCOPUS:84874567405
SN - 9784990644109
T3 - Proceedings - International Conference on Pattern Recognition
SP - 302
EP - 305
BT - ICPR 2012 - 21st International Conference on Pattern Recognition
T2 - 21st International Conference on Pattern Recognition, ICPR 2012
Y2 - 11 November 2012 through 15 November 2012
ER -