2019
DOI: 10.1016/j.patrec.2018.05.005
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A multi-feature selection approach for gender identification of handwriting based on kernel mutual information

Abstract: This paper presents a new flexible approach to predict the gender of the writers from their handwriting samples. Handwriting features like slant, curvature, line separation, chain code, character shapes, and more, can be extracted from different methods. Therefore, the multi-feature sets are irrelevant and redundant. The conflict of the features exists in the sets, which affects the accuracy of classification and the computing cost. This paper proposes an approach, named Kernel Mutual Information (KMI), that f… Show more

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Cited by 41 publications
(14 citation statements)
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References 28 publications
(48 reference statements)
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“…Cha and Srihari 20 Using ANNs, and the success rate was reported to be 70.2% SVM Bouadjenek et al 23 Reported that accuracy of approximately 70% was obtained regardless of the language in the gender determination study conducted on both Arabic (KHATT) and English (IAM) handwritten text clusters using histogram oriented gradient and gradient local binary pattern systems and the support vector machine (SVM) classifier One Class SVM Guerbai et al 24 Using one-class SVM (OC-SVM), the success rate with a single classifier was reported to be 62.49%, and it was 77.3% in the case of combined classifiers SVM Bi et al 41 In this study, an approach called Kernel Mutual Information (KMI) is proposed. It is 66.3% in the ICDAR 2013 database and 66.3% in the RDF.…”
Section: Annmentioning
confidence: 99%
“…Cha and Srihari 20 Using ANNs, and the success rate was reported to be 70.2% SVM Bouadjenek et al 23 Reported that accuracy of approximately 70% was obtained regardless of the language in the gender determination study conducted on both Arabic (KHATT) and English (IAM) handwritten text clusters using histogram oriented gradient and gradient local binary pattern systems and the support vector machine (SVM) classifier One Class SVM Guerbai et al 24 Using one-class SVM (OC-SVM), the success rate with a single classifier was reported to be 62.49%, and it was 77.3% in the case of combined classifiers SVM Bi et al 41 In this study, an approach called Kernel Mutual Information (KMI) is proposed. It is 66.3% in the ICDAR 2013 database and 66.3% in the RDF.…”
Section: Annmentioning
confidence: 99%
“…To determine the important features, we employed three different algorithms: Relief [32], Information Gain [33], and analysis of variance (ANOVA) F-value [34] using the open-source software ORANGE (version 3.26; University of Ljubljana, Ljubljana, Slovenia). These feature selection models are well known for identifying features with good classification performance [35,36].…”
Section: Label-free Quantification and Bioinformatics Analysismentioning
confidence: 99%
“…Mutual information measure provides a formal way to model the mutual information between the features and the classes (Bi et al, 2018). The mutual information M i (w)…”
Section: Mutual Informationmentioning
confidence: 99%