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SR University,School of Computer Science and Artificial Intelligence,Warangal,Telangana,India,506371
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Тип публикации: Proceedings Article
Дата публикации: 2025-04-17
Краткое описание
In image classification, identification of handwritten digits forms a simple choreacle especially with datasets such as MNIST that has grown to become a benchmark for testing machine learning models. Though several models for digital recognition have become available, achieving high accuracy and economy in processing remains a difficulty. It is meant to present a tailored design for a Convolutional Neural Network (CNN) with regard to the MNIST dataset, which should achieve an optimal balance between accuracy and speed. For improving the learning ability and robustness of the network, special architectural design changes are incorporated into our proposed architecture: dropout regularisation and optimum convolutional layers. Using these techniques the model precisely identifies the digits at 98%. This excellent performance of the model underlines its potential to be applied in practical scenarios where speed and accuracy are crucially important. The work advances this increasingly popular field of deep learning, insofar as it demonstrates how fine-tuned CNNs can be engineered to yield accurate and efficient results for more challenging image classification tasks, with far-reaching consequences for broader machine learning applications.
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