Please use this identifier to cite or link to this item: https://cuir.car.chula.ac.th/handle/123456789/36023
Title: Neural network-based teeth recognition system using hybrid features
Other Titles: ระบบรู้จำฟันบนพื้นฐานของโครงข่ายประสาทโดยใช้ลักษณะเด่นผสม
Authors: Suprachaya Veeraprasit
Advisors: Suphakant Phimoltares
Other author: Chulalongkorn University. Faculty of Science
Advisor's Email: suphakant.p@chula.ac.th
Subjects: Neural networks (Computer science)
Pattern recognition systems
Optical pattern recognition
Teeth -- Identification
นิวรัลเน็ตเวิร์ค (คอมพิวเตอร์)
การรู้จำรูปแบบ
การรู้จำภาพ
ฟัน -- การพิสูจน์เอกลักษณ์
Issue Date: 2010
Publisher: Chulalongkorn University
Abstract: Nowadays, biometric technology is used in various security applications. The efficiency of such applications depends upon a type of biometric information. Nevertheless, some information can be faked by intent surgery or they are unexpectedly reshaped such as face, iris, palmprint and fingerprint. Unlike ordinary features, teeth cannot be easily reshaped. In this thesis, hybrid features and machine learning model for teeth recognition are proposed. Hybrid features of this system are composed of global and local features simultaneously fed into the system. In this thesis, proposed global features composed of singular values from singular value decomposition and color histogram of teeth image are analyzed and give the adequate result whilst the proposed local features are the ratio of the width from upper-front-teeth. These features were fed into the multilayer perceptron network with Levenberg-Marquart backpropagation training algorithm. With these features and model, the proposed method performs better than other existing techniques in terms of accuracy and error.
Other Abstract: Nowadays, biometric technology is used in various security applications. The efficiency of such applications depends upon a type of biometric information. Nevertheless, some information can be faked by intent surgery or they are unexpectedly reshaped such as face, iris, palmprint and fingerprint. Unlike ordinary features, teeth cannot be easily reshaped. In this thesis, hybrid features and machine learning model for teeth recognition are proposed. Hybrid features of this system are composed of global and local features simultaneously fed into the system. In this thesis, proposed global features composed of singular values from singular value decomposition and color histogram of teeth image are analyzed and give the adequate result whilst the proposed local features are the ratio of the width from upper-front-teeth. These features were fed into the multilayer perceptron network with Levenberg-Marquart backpropagation training algorithm. With these features and model, the proposed method performs better than other existing techniques in terms of accuracy and error.
Description: Thesis (M.Sc.)--Chulalongkorn University, 2010
Degree Name: Master of Science
Degree Level: Master's Degree
Degree Discipline: Computer Science and Information Technology
URI: http://cuir.car.chula.ac.th/handle/123456789/36023
URI: http://doi.org/10.14457/CU.the.2010.852
metadata.dc.identifier.DOI: 10.14457/CU.the.2010.852
Type: Thesis
Appears in Collections:Sci - Theses

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