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Learning and geometry : computational approaches

Learning and geometry : computational approaches

Material type
단행본
Personal Author
Kueker, D. W., 1943-. Smith, Carl, 1950 Apr. 25-.
Title Statement
Learning and geometry : computational approaches / David Kueker, Carl Smith, editors.
Publication, Distribution, etc
Boston :   Birkhauser,   1996.  
Physical Medium
xiii, 210 p. : ill. (some col.) ; 27 cm.
Series Statement
Progress in computer science and applied logic ;v. 14.
ISBN
0817638253 (h : acid-free paper) 3764338253 (h : acid-free paper)
General Note
Papers presented at a workshop on Learning and geometry in January of 1991.  
Bibliography, Etc. Note
Includes bibliographical references.
Subject Added Entry-Topical Term
Computer vision --Congresses. Geometry --Congresses.
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008 950914s1996 maua b 100 0 eng
010 ▼a 95041450
020 ▼a 0817638253 (h : acid-free paper)
020 ▼a 3764338253 (h : acid-free paper)
040 ▼a DLC ▼c DLC ▼d DLC ▼d 244002
049 0 ▼l 151056183
050 0 0 ▼a TA1634 ▼b .L43 1996
082 0 0 ▼a 006.3/7 ▼2 20
090 ▼a 006.37 ▼b L438
245 0 0 ▼a Learning and geometry : ▼b computational approaches / ▼c David Kueker, Carl Smith, editors.
260 ▼a Boston : ▼b Birkhauser, ▼c 1996.
300 ▼a xiii, 210 p. : ▼b ill. (some col.) ; ▼c 27 cm.
440 0 ▼a Progress in computer science and applied logic ; ▼v v. 14.
500 ▼a Papers presented at a workshop on Learning and geometry in January of 1991.
504 ▼a Includes bibliographical references.
650 0 ▼a Computer vision ▼x Congresses.
650 0 ▼a Geometry ▼x Congresses.
700 1 ▼a Kueker, D. W., ▼d 1943-.
700 1 ▼a Smith, Carl, ▼d 1950 Apr. 25-.

Holdings Information

No. Location Call Number Accession No. Availability Due Date Make a Reservation Service
No. 1 Location Sejong Academic Information Center/Science & Technology/ Call Number 006.37 L438 Accession No. 151056183 Availability Available Due Date Make a Reservation Service B M ?

Contents information

Book Introduction

The field of computational learning theory arose out of the desire to for­ mally understand the process of learning. As potential applications to artificial intelligence became apparent, the new field grew rapidly. The learning of geo­ metric objects became a natural area of study. The possibility of using learning techniques to compensate for unsolvability provided an attraction for individ­ uals with an immediate need to solve such difficult problems. Researchers at the Center for Night Vision were interested in solving the problem of interpreting data produced by a variety of sensors. Current vision techniques, which have a strong geometric component, can be used to extract features. However, these techniques fall short of useful recognition of the sensed objects. One potential solution is to incorporate learning techniques into the geometric manipulation of sensor data. As a first step toward realizing such a solution, the Systems Research Center at the University of Maryland, in conjunction with the Center for Night Vision, hosted a Workshop on Learning and Geometry in January of 1991. Scholars in both fields came together to learn about each others' field and to look for common ground, with the ultimate goal of providing a new model of learning from geometrical examples that would be useful in computer vision. The papers in the volume are a partial record of that meeting.

The field of computational learning theory arose out of the desire to for­ mally understand the process of learning. As potential applications to artificial intelligence became apparent, the new field grew rapidly. The learning of geo­ metric objects became a natural area of study. The possibility of using learning techniques to compensate for unsolvability provided an attraction for individ­ uals with an immediate need to solve such difficult problems. Researchers at the Center for Night Vision were interested in solving the problem of interpreting data produced by a variety of sensors. Current vision techniques, which have a strong geometric component, can be used to extract features. However, these techniques fall short of useful recognition of the sensed objects. One potential solution is to incorporate learning techniques into the geometric manipulation of sensor data. As a first step toward realizing such a solution, the Systems Research Center at the University of Maryland, in conjunction with the Center for Night Vision, hosted a Workshop on Learning and Geometry in January of 1991. Scholars in both fields came together to learn about each others' field and to look for common ground, with the ultimate goal of providing a new model of learning from geometrical examples that would be useful in computer vision. The papers in the volume are a partial record of that meeting.


Information Provided By: : Aladin

Author Introduction

칼 스미스(엮은이)

오랜 경험을 가진 전문 저술가로 2008년 현재 버지니아 주에 살면서 집필 활동을 한다.

David Kueker(엮은이)

Information Provided By: : Aladin

Table of Contents

Learning.- MDL Learning.- PAC Learning, Noise and Geometry.- A Review of Some Extensions to the PAC Learning Model.- Geometry.- Finite Point Sets and Oriented Matroids: Combinatorics in Geometry.- A Survey of Geometric Reasoning Using Algebraic Methods.- Synthetic versus Analytic Geometry for Computers.- Representing Geometric Configurations.- Geometry Theorem Proving in Euclidean, Decartesian, Hilbertian and Computerwise Fashion.


Information Provided By: : Aladin

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