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A novel approach for handedness detection from off-line handwriting using fuzzy conceptual reduction

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TLDR
This paper demonstrates that it is important to select only the most characterizing features from handwritings and reject all those that do not contribute effectively to the process of handwriting recognition, and based mainly on fuzzy conceptual reduction by applying the Lukasiewicz implication.
Abstract
A challenging area of pattern recognition is the recognition of handwritten texts in different languages and the reduction of a volume of data to the greatest extent while preserving associations (or dependencies) between objects of the original data. Until now, only a few studies have been carried out in the area of dimensionality reduction for handedness detection from off-line handwriting textual data. Nevertheless, further investigating new techniques to reduce the large amount of processed data in this field is worthwhile. In this paper, we demonstrate that it is important to select only the most characterizing features from handwritings and reject all those that do not contribute effectively to the process of handwriting recognition. To achieve this goal, the proposed approach is based mainly on fuzzy conceptual reduction by applying the Lukasiewicz implication. Handwritten texts in both Arabic and English languages are considered in this study. To evaluate the effectiveness of our proposal approach, classification is carried out using a K-Nearest-Neighbors (K-NN) classifier using a database of 121 writers. We consider left/right handedness as parameters for the evaluation where we determine the recall/precision and F-measure of each writer. Then, we apply dimensionality reduction based on fuzzy conceptual reduction by using the Lukasiewicz implication. Our novel feature reduction method achieves a maximum reduction rate of 83.43 %, thus making the testing phase much faster. The proposed fuzzy conceptual reduction algorithm is able to reduce the feature vector dimension by 31.3 % compared to the original “best of all combined features” algorithm.

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Predicting students’ attention in the classroom from Kinect facial and body features

TL;DR: In this paper, a feature set characterizing both facial and body properties of a student, including gaze point and body posture, are used to train classifiers which estimate time-varying attention levels of individual students.
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Improving handwriting based gender classification using ensemble classifiers

TL;DR: A system to predict gender from images of handwriting using textural descriptors that is significantly better than those of the state-of-the-art systems on this problem validating the ideas put forward in this study.
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Gender classification from offline multi-script handwriting images using oriented Basic Image Features (oBIFs)

TL;DR: The present study demonstrates the effectiveness of relatively less investigated oBIFs as a robust textual descriptor in gender classification competitions reporting classification rates of 71%, 76% and 68% respectively; outperforming the participating systems of these competitions.
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Gender and Handedness Prediction from Offline Handwriting Using Convolutional Neural Networks

TL;DR: This work describes an experimental study on the suitability of deep neural networks to three automatic demographic problems: gender, handedness, and combined gender-and-handedness classifications, respectively, carried out on two public handwriting databases.
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Survey on the impact of fingerprint image enhancement

TL;DR: This work shows that the biometric performance can be improved by image enhancement, and the significance of improvements depends on both the quality of the datasets and the feature extraction.
References
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Journal ArticleDOI

Random Forests

TL;DR: Internal estimates monitor error, strength, and correlation and these are used to show the response to increasing the number of features used in the forest, and are also applicable to regression.
Book

Introduction to Modern Information Retrieval

TL;DR: Reading is a need and a hobby at once and this condition is the on that will make you feel that you must read.
Journal ArticleDOI

Online and off-line handwriting recognition: a comprehensive survey

TL;DR: The nature of handwritten language, how it is transduced into electronic data, and the basic concepts behind written language recognition algorithms are described.
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