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Handwritten Bangla Basic and Compound character recognition using MLP and SVM classifier

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TLDR
In this article, a novel approach for recognition of handwritten compound Bangla characters along with the Basic characters of Bangla alphabet is presented, which makes an attempt to identify compound character classes from most frequently to less frequently occurred ones, i.e., in order of importance.
Abstract: 
A novel approach for recognition of handwritten compound Bangla characters, along with the Basic characters of Bangla alphabet, is presented here. Compared to English like Roman script, one of the major stumbling blocks in Optical Character Recognition (OCR) of handwritten Bangla script is the large number of complex shaped character classes of Bangla alphabet. In addition to 50 basic character classes, there are nearly 160 complex shaped compound character classes in Bangla alphabet. Dealing with such a large varieties of handwritten characters with a suitably designed feature set is a challenging problem. Uncertainty and imprecision are inherent in handwritten script. Moreover, such a large varieties of complex shaped characters, some of which have close resemblance, makes the problem of OCR of handwritten Bangla characters more difficult. Considering the complexity of the problem, the present approach makes an attempt to identify compound character classes from most frequently to less frequently occurred ones, i.e., in order of importance. This is to develop a frame work for incrementally increasing the number of learned classes of compound characters from more frequently occurred ones to less frequently occurred ones along with Basic characters. On experimentation, the technique is observed produce an average recognition rate of 79.25 after three fold cross validation of data with future scope of improvement and extension.

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Citations
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Handwriting Recognition in Indian Regional Scripts: A Survey of Offline Techniques

TL;DR: Various feature extraction and classification techniques associated with the offline handwriting recognition of the regional scripts are discussed in this survey, which will serve as a compendium not only for researchers in India, but also for policymakers and practitioners in India.
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Handwritten isolated Bangla compound character recognition: A new benchmark using a novel deep learning approach

TL;DR: A novel deep learning technique for the recognition of handwritten Bangla isolated compound character is presented and a new benchmark of recognition accuracy on the CMATERdb 3.3.1.3 dataset is reported.
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A multi-objective approach towards cost effective isolated handwritten Bangla character and digit recognition

TL;DR: A multi-objective region sampling methodology for isolated handwritten Bangla characters and digits recognition has been proposed and an AFS theory based fuzzy logic is utilized to develop a model for combining the pareto-optimal solutions from two multi- objective heuristics algorithms.
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A multi-scale deep quad tree based feature extraction method for the recognition of isolated handwritten characters of popular indic scripts

TL;DR: In the present work, a non-explicit feature based approach, more specifically, a multi-column multi-scale convolutional neural network (MMCNN) based architecture has been proposed for this purpose and a deep quad-tree based staggered prediction model has be proposed for faster character recognition.
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A benchmark image database of isolated Bangla handwritten compound characters

TL;DR: A benchmark image database of isolated handwritten Bangla compound characters, used in the standard Bangla literature, is presented, which may facilitate research on handwritten character recognition, especially related to Bangla form document processing systems.
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