서지주요정보
Featuring extraction using independent component analysis = 독립요소 분석에 의한 자료의 특징 추출
서명 / 저자 Featuring extraction using independent component analysis = 독립요소 분석에 의한 자료의 특징 추출 / Hae-Kwang Woo.
발행사항 [대전 : 한국과학기술원, 2005].
Online Access 원문보기 원문인쇄

소장정보

등록번호

8015951

소장위치/청구기호

학술문화관(문화관) 보존서고

MMA 05010

휴대폰 전송

도서상태

이용가능(대출불가)

사유안내

반납예정일

리뷰정보

초록정보

For several decades, many researchers have studied for extracting features from data and classifying the patterns using them. Above all, the research about independent component analysis (ICA) is noticeable because we can get information from data by imposing the nature of independence on them. The goal of our work is to compress the data into simple structures and then express them as exact as possible. Herein, we use two methodology for compressing the data. Firstly, we use principal component analysis (PCA). This method compress the data by using the eigenvectors of input correlation matrix. The Second is kirsch edge detection which detects the directions of data components and if we use this with PCA, we can considerably reduce the dimension of data. We focused on determining the principles of classification by extracting the features of independent components. To test the proposed method, we experiment the performance of handwritten digits recognition (HDR) using USPS database, which has total 10 classes from 0 to 9. In this study, we applied new frameworks using ICA for efficient data recognition and evaluated our approach through HDR experiments. From the experimental results, we have shown that the proposed method can generate effective features for pattern recognition. And the suggested feature extraction techniques can be applied to compression, reconstruction, code-making, and recognition of the data.

서지기타정보

서지기타정보
청구기호 {MMA 05010
형태사항 v, 39 p. : 삽화 ; 26 cm
언어 영어
일반주기 저자명의 한글표기 : 우해광
지도교수의 영문표기 : Rhee-Man Kil
지도교수의 한글표기 : 길이만
학위논문 학위논문(석사) - 한국과학기술원 : 응용수학전공,
서지주기 Reference : p. 38-39
QR CODE

책소개

전체보기

목차

전체보기

이 주제의 인기대출도서