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Ching Y. Suen

Researcher at Concordia University

Publications -  532
Citations -  25017

Ching Y. Suen is an academic researcher from Concordia University. The author has contributed to research in topics: Handwriting recognition & Feature extraction. The author has an hindex of 65, co-authored 511 publications receiving 23594 citations. Previous affiliations of Ching Y. Suen include École de technologie supérieure & Concordia University Wisconsin.

Papers
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Book ChapterDOI

Multiple Classifier Combination Methodologies for Different Output Levels

TL;DR: This article examines the main combination methods that have been developed for different levels of classifier outputs - abstract level, ranked list of classes, and measurements.
Journal ArticleDOI

A new benchmark on the recognition of handwritten Bangla and Farsi numeral characters

TL;DR: Some results of handwritten Bangla and Farsi numeral recognition on binary and gray-scale images are presented and some implementation choices of gradient direction feature extraction, some advanced normalization and classification methods are compared.
BookDOI

Computer recognition and human production of handwriting

TL;DR: This volume hopes to help researchers involved in handwriting research achieve better understanding of the handwriting process, shed new light on motor control and learning, and solve recognition problems.
Journal ArticleDOI

Approximation of graph edit distance based on Hausdorff matching

TL;DR: A quadratic time approximation of graph edit distance based on Hausdorff matching is proposed and shows a promising potential in terms of flexibility, efficiency, and accuracy.
Proceedings ArticleDOI

Unsupervised feature selection using multi-objective genetic algorithms for handwritten word recognition

TL;DR: A methodology for feature selection in unsupervisedlearning makes use of a multi-objectivegenetic algorithm where the minimization of thenumber of features and a validity index that measures the quality of clusters have been used to guide the search toward more discriminant features and the best number of clusters.