2021
DOI: 10.36548/jitdw.2021.2.003
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Construction of Statistical SVM based Recognition Model for Handwritten Character Recognition

Abstract: There are many applications of the handwritten character recognition (HCR) approach still exist. Reading postal addresses in various states contains different languages in any union government like India. Bank check amounts and signature verification is one of the important application of HCR in the automatic banking system in all developed countries. The optical character recognition of the documents is comparing with handwriting documents by a human. This OCR is used for translation purposes of characters f… Show more

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Cited by 81 publications
(14 citation statements)
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“…In this paper,we propose a Quantitative Plant Type Recognition algorithm based on Gene Expression Programming(QPTR-GEP). The experimental results of classification on Iris outperform SVM [2], Decision Tree [3].…”
Section: Introductionmentioning
confidence: 93%
“…In this paper,we propose a Quantitative Plant Type Recognition algorithm based on Gene Expression Programming(QPTR-GEP). The experimental results of classification on Iris outperform SVM [2], Decision Tree [3].…”
Section: Introductionmentioning
confidence: 93%
“…Support vector machine : Support vector machine (SVM) is often used to learn high‐level concepts from low‐level features. SVM is considered a popular candidate for learning in the field of image retrieval, and has also been used for text classification, object recognition, and other tasks (Balasubramaniam, 2021; Chandra & Bedi, 2021; Hamdan & Sathesh, 2021; Mohammadi et al, 2021; Otchere et al, 2021; Ye et al, 2021). Due to the superiority of SVM, it is widely used with other models for the detection of high‐level features.…”
Section: Computer Science Studiesmentioning
confidence: 99%
“…Hasil Penelitian didapatkan tingkat akurasi tertinggi untuk setiap arsitektur dengan menggunakan optimizer Adam sehingga didapatkan tingkat akurasi menggunakan VGG-16 sebesar 93% dan dengan menggunakan LeNet sebesar 67%. Penelitian mengenai pengenalan karakter tulisan tangan menggunakan SVM berbasis Recognition Model [7], untuk meningkatkan tingkat akurasi maka diperlukan dataset yang komprehensif dan memiliki variasi karakter . Hasil dari penelitian memberikan akurasi 94% dan mengenali karakter tulisan tangan dalam skenario real-time.…”
Section: Latar Belakangunclassified