International Journal of Advances in Applied Sciences
Vol 13, No 3: September 2024

Optical character recognition for Telugu handwritten text using SqueezeNet convolutional neural networks model

Revathi, Buddaraju (Unknown)
Raju, B N V Narasimha (Unknown)
Marapatla, Ajay Dilip Kumar (Unknown)
Veeramanikanta, Kagitha (Unknown)
Dinesh, Katta (Unknown)
Supraja, Maddirala (Unknown)



Article Info

Publish Date
01 Sep 2024

Abstract

Optical character recognition (OCR) is a process that recognizes and converts data from scanned images, including both handwritten and printed documents, into an accessible format. The challenges in Telugu OCR arise from compound characters, an extensive character set, limited datasets, character similarities, and difficulties in segmenting overlapping characters. To tackle these segmentation complexities, an algorithm has been developed, prioritizing the preservation of essential features during character segmentation. For distinguishing between structurally similar characters, we used convolutional neural networks (CNN) due to their feature-extracting properties. We have employed the CNN model, the SqueezeNet for feature extraction, resulting in an impressive character recognition rate of 94% and a word recognition rate of 80%.

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Journal Info

Abbrev

IJAAS

Publisher

Subject

Earth & Planetary Sciences Environmental Science Materials Science & Nanotechnology Mathematics Physics

Description

International Journal of Advances in Applied Sciences (IJAAS) is a peer-reviewed and open access journal dedicated to publish significant research findings in the field of applied and theoretical sciences. The journal is designed to serve researchers, developers, professionals, graduate students and ...