Pattern recognition is one of the major challenges in statistics framework. Its goal is the feature extraction to classify the patterns into categories. A well-known example in this field is the handwritten digit recognition where digits have to be assigned into one of the 10 classes using some classification method. Our purpose is to present alternative classification methods based on statistical techniques. We show a comparison between a multivariate and a probabilistic approach, concluding that both methods provide similar results in terms of test-error rate. Experiments are performed on the known MNIST and USPS databases in binary-level image. Then, as an additional contribution we introduce a novel method to binarize images, ba...
Image classification is a burgeoning field of study. Despite the advances achieved in this camp, the...
This work presents a system for pattern recognition that combines a self-organising unsupervised tec...
Handwritten digit recognition is an important benchmark task in computer vision. Learning algorithms...
Pattern recognition is one of the major challenges in statistics framework. Its goal is the feature...
Abstract — A simple method based on some statistical measurements for Latin handwritten digit recogn...
We present an original algorithm for recognizing handwritten digits. We begin by introducing a virtu...
Handwritten digit recognition is one of the most important issues in the area of pattern recognition...
Recognition of handwritten digits is a problem, which could serve as model task for multiclass recog...
This paper covers the work done in handwritten digit recognition and the various classifiers that ha...
The purpose of this paper is to compare classical machine learning algorithms for handwritten number...
Pattern recognition plays a vital role due to demand in artificial intelligence in practical problem...
Often a pattern recognition problem is too hard to solve with ordinary approaches involving too comp...
Project deals with the applications of ML (Machine Learning ) techniques for detecting Hand written ...
Digit Recognition is a computer vision technique to predict the numerical value of digits in a datas...
Pattern recognition using statistical models such as Dynamic Bayesian Networks (DBNs) is currently a...
Image classification is a burgeoning field of study. Despite the advances achieved in this camp, the...
This work presents a system for pattern recognition that combines a self-organising unsupervised tec...
Handwritten digit recognition is an important benchmark task in computer vision. Learning algorithms...
Pattern recognition is one of the major challenges in statistics framework. Its goal is the feature...
Abstract — A simple method based on some statistical measurements for Latin handwritten digit recogn...
We present an original algorithm for recognizing handwritten digits. We begin by introducing a virtu...
Handwritten digit recognition is one of the most important issues in the area of pattern recognition...
Recognition of handwritten digits is a problem, which could serve as model task for multiclass recog...
This paper covers the work done in handwritten digit recognition and the various classifiers that ha...
The purpose of this paper is to compare classical machine learning algorithms for handwritten number...
Pattern recognition plays a vital role due to demand in artificial intelligence in practical problem...
Often a pattern recognition problem is too hard to solve with ordinary approaches involving too comp...
Project deals with the applications of ML (Machine Learning ) techniques for detecting Hand written ...
Digit Recognition is a computer vision technique to predict the numerical value of digits in a datas...
Pattern recognition using statistical models such as Dynamic Bayesian Networks (DBNs) is currently a...
Image classification is a burgeoning field of study. Despite the advances achieved in this camp, the...
This work presents a system for pattern recognition that combines a self-organising unsupervised tec...
Handwritten digit recognition is an important benchmark task in computer vision. Learning algorithms...