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Journal ArticleDOI

Improving Classification Using a Tree Structured Neural Network

TLDR
A tree structured network for improving the performance of the feedforward neural network FN classifier by improving the recognition accuracy from 80% for the single FN to 97.7% using the same simple set of features.
Abstract
This article introduces a tree structured network for improving the performance of the feedforward neural network FN classifier. The building blocks of the tree are the feedforward neural network with backpropagation learning scheme and the simple logical OR neural network ORNN. The confusion matrix CM, resulting from some preliminary experiments, is used to divide the considered patterns into groups in several primary stages until no more grouping could be obtained. The proposed structure can be used for any pattern classification problem. In this article, the testing environment is the isolated handwritten Arabic character set, which is a problem of reasonable complexity. Two simple kinds of feature vectors are used to represent characters before the FN. The use of the proposed tree structure improved the recognition accuracy from 80% for the single FN to 97.7% using the same simple set of features. The results show that with the proposed method, better classification results could be obtained without having to introduce more complex features.

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Citations
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Modular Neural Network Approaches for Surgical Image Recognition

TL;DR: In this paper , a semi-supervised approach based on modular learning was proposed for Dorsal Capsulo-Scapholunate Septum (DCSS) instability classification.
References
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Journal ArticleDOI

Invariant image recognition by Zernike moments

TL;DR: A systematic reconstruction-based method for deciding the highest-order ZERNike moments required in a classification problem is developed and the superiority of Zernike moment features over regular moments and moment invariants was experimentally verified.
Journal ArticleDOI

Computer recognition of Arabic cursive scripts

TL;DR: This system basically includes a segmentation stage in order to recognize typewritten Arabic cursive words and has shown a recognition rate of 99%.
Journal ArticleDOI

On-line recognition of handwritten isolated arabic characters

TL;DR: Features that are found to be independent of the writer style are represented as a list (vector) of integer values, while those that are subjected to more variations are represented using a Freeman-like chain code, which proved to be useful in reducing recognition time.
Journal ArticleDOI

Machine recognition of optically captured machine printed arabic text

TL;DR: The development of algorithms for the machine recognition of optically captured Arabic characters and their isolation from the printed text and an algorithm for separation of individual characters are discussed.
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