Litcius/Paper detail

Visualization of Customized Convolutional Neural Network for Natural Language Recognition

Tajinder Singh, Sheifali Gupta, Meenu Garg, Deepali Gupta, Abdullah Alharbi, Hashem Alyami, Divya Anand, A. Ortega, Nitin Goyal

2022Sensors17 citationsDOIOpen Access PDF

Abstract

For analytical approach-based word recognition techniques, the task of segmenting the word into individual characters is a big challenge, specifically for cursive handwriting. For this, a holistic approach can be a better option, wherein the entire word is passed to an appropriate recognizer. Gurumukhi script is a complex script for which a holistic approach can be proposed for offline handwritten word recognition. In this paper, the authors propose a Convolutional Neural Network-based architecture for recognition of the Gurumukhi month names. The architecture is designed with five convolutional layers and three pooling layers. The authors also prepared a dataset of 24,000 images, each with a size of 50 × 50. The dataset was collected from 500 distinct writers of different age groups and professions. The proposed method achieved training and validation accuracies of about 97.03% and 99.50%, respectively for the proposed dataset.

Topics & Concepts

Computer scienceConvolutional neural networkArtificial intelligenceCursivePoolingWord (group theory)Natural language processingSpeech recognitionTask (project management)Pattern recognition (psychology)HandwritingVisualizationArchitectureIntelligent word recognitionHandwriting recognitionIntelligent character recognitionFeature extractionCharacter recognitionImage (mathematics)EconomicsPhilosophyManagementLinguisticsVisual artsArtHandwritten Text Recognition TechniquesHand Gesture Recognition SystemsVehicle License Plate Recognition