Abstract:
This thesis presents a novel segmentation free technique for the design and implementation of an
OCR (Optical Character Recognition) system for printed Nastalique text.
Specific area of this thesis is document understanding and recognition which is a branch of computer
vision and in turn a sub-class of Artificial Intelligence.
Optical character recognition is the translation of optically scanned bitmaps of printed or hand written
text into digitally editable data files. OCRs developed for many world languages are already under
efficient use but none exist for Nastalique – a calligraphic adaptation of the Arabic script, just as Jawi
is for Malay. More often, a single script with its basic character shapes is adapted for writing in
multiple languages e.g. the Roman script for English, German and French, and the Arabic script for
Persian, Sindhi, Urdu, Pashtu and Malay.
Urdu has 39 characters against the Arabic 28. Each character then has two to four different shapes
according to their position in the word: isolated, initial, medial and final. Many character shapes have
multiple instances and are context sensitive – character shapes changing with changes in the
antecedent or the precedent character. At times even the third or the fourth character may cause a
similar change depicting an n-gram model in a Markov chain. Unlike the Roman script, word and
character overlapping in Nastalique, makes optical recognition extremely complex.
Compared to Roman script languages’ OCRs very little research work is done on Arabic Naskh OCR.
Only a few Arabic Naskh OCR systems are available today and they too are far from perfect, lagging
behind in accuracy as compared to Roman script OCR systems.
In this perspective Nastalique is even more complicated than Naskh as it has multiple base lines,
more overlapping of characters within a ligature and between adjacent ligatures, vertical stacking of
characters in a ligature etc.
Urdu has still not attracted researchers’ attention for the development of OCR partly due to lack of
funds in this area but mainly due to the challenges the Nastalique style offers because of its
cursiveness and context-sensitivity. For the same reason published research work in this area is
nearly non-existent.
The proposed system for Nastalique OCR does not require segmentation of a ligature into constituent
character shapes. However, it does require segmentation at two levels i.e. first the text image is
segmented into lines of text then each of the lines of text is further segmented into ligatures or
isolated characters. The next step is a line by line cross-correlation for recognition of characters in the
ligatures whereby, character codes are written into a text file in the sequence the characters are found
in the ligature. As the recognition process is completed, the character codes in the text file are given
to the rendering engine, which displays the recognized text in a text region.
The limitation of the proposed Nastalique character recognition system is that it is font dependent: it
needs the same font file for recognition which was used to write the text in. The new undertaking has
greater challenges as it will aim to overcome the inherent cursiveness and context sensitivity of
Nastalique style of writing.
For Nastalique OCR, we develop character-based True Type Font files for a few Nastalique words.
These words are written using the same character-based TTF font and an image is made of the
Nastalique text. The image is then given to our Nastalique OCR. After recognition the rendering is
done by using the same TTF font file to display the recognized text. The work is therefore three folds;
development of character-based Nastalique True Type Font, Nastalique character recognition and
rendering the recognized text using character-based Nastalique True Type Font.
Since our character-based segmentation-free Nastalique OCR algorithm needs, as a ground work, a
character-based Nastalique Text Processor, we have also proposed a Finite State Nastalique Text
Processor Model. Implementation is not yet done so results are not reported. However this model
could serve as an impetus for future research in this challenging field.
Optical Character Recognition for Roman script languages is almost a solved problem for document
images and researchers are now focusing on extraction and recognition of text from video scenes.
This new and emerging field in character recognition is called Video OCR and has numerous
applications like video annotation, indexing, retrieval, search, digital libraries, and lecture video
indexing.
The emerging field for character recognition is attracting research on other scripts like Chinese, but
to the best of our knowledge, no work is reported as yet, on Video OCR for Arabic script languages
like Arabic, Persian and Urdu.
As an extension of our Nastalique OCR to Video OCR for Arabic script languages, we have also
performed experiments on video text identification, localization and extraction for its recognition. We
have used MACH (Maximum Average Correlation Height) filter to identify text regions in video
frames, these text regions are then localized and extracted for recognition. All research and
development work is done using Matlab 7.0. Experiments and results are reported in the thesis.