State of The Art in Handwritten Digit Recognition
نویسندگان
چکیده
State of The Art in Handwritten Digit Recognition Pooja Agrawal Department of Computer Science, SVITS, Indore, Madhya Pradesh, INDIA Prof. Anand Rajavat Department of Computer Science, SVITS, Indore, Madhya Pradesh, INDIA RGPV/SVITS Indore Sanwer Road, Gram Baroli, Alwasa, Indore, Madhya Pradesh, INDIA ______________________________________________________________________________________ Abstract: In this paper, we present an overview of existing handwritten character recognition techniques, specially handwritten digit recognition. All these algorithms are described more or less on their own. Handwritten character recognition is a very popular and computationally expensive task. We also explain the fundamentals of handwritten character recognition. We describe modern and popular approaches for handwritten character recognition. Their strengths and weaknesses are also analyzed. We have concluded with the common problems existing in these methods. __________________________________________________________________________________________
منابع مشابه
Persian Handwritten Digit Recognition Using Particle Swarm Probabilistic Neural Network
Handwritten digit recognition can be categorized as a classification problem. Probabilistic Neural Network (PNN) is one of the most effective and useful classifiers, which works based on Bayesian rule. In this paper, in order to recognize Persian (Farsi) handwritten digit recognition, a combination of intelligent clustering method and PNN has been utilized. Hoda database, which includes 80000 P...
متن کاملHandwritten Bangla Digit Recognition Using Deep Learning
In spite of the advances in pattern recognition technology, Handwritten Bangla Character Recognition (HBCR) (such as alpha-numeric and special characters) remains largely unsolved due to the presence of many perplexing characters and excessive cursive in Bangla handwriting. Even the best existing recognizers do not lead to satisfactory performance for practical applications. To improve the perf...
متن کاملDeep Columnar Convolutional Neural Network
Recent developments in the field of deep learning have shown that convolutional networks with several layers can approach human level accuracy in tasks such as handwritten digit classification and object recognition. It is observed that the state-of-the-art performance is obtained from model ensembles, where several models are trained on the same data and their predictions probabilities are ave...
متن کاملIs the Neocognitron Capable of State-of-the-art Digit Recognition?
We describe a series of experiments that evaluate the performance of Fukushima's neocognitron using a database of handwritten ZIP code digits. A number of improvements to the original neocognitron were proposed and implemented, resulting in a peak performance of 85.54% correct classiication, with 95.69% reliability. This result suggests that, with appropriate modiications, the neocognitron is a...
متن کاملEnsemble Methods for Handwritten Digit Recognition
Neural network ensembles are applied to handwritten digit recognition. The invidual networks of the ensemble are combinations of sparse Look-Up Tables with random receptive fields. It is shown that the consensus of a group of networks outperform the best invidual of the ensemble and further we show that it is possible to estimate the ensemble performance as well as the learning curve, on a medi...
متن کامل