Automated taxon identification in systematics theory, approaches and applications

The automated identification of biological objects or groups has been a dream among taxonomists and systematists for centuries. However, progress in designing and implementing practical systems for fully automated taxon identification has been frustratingly slow. Regardless, the dream has never died...

Full description

Saved in:
Bibliographic Details
Corporate Author: Systematics Association
Other Authors: MacLeod, Norman 1953-
Format: Book
Language:English
Published: Boca Raton CRC Press 2007
Series:The Systematics Association special volume series 74
Subjects:
Online Access:Click Here to View Status and Holdings.
Tags: Add Tag
No Tags, Be the first to tag this record!

MARC

LEADER 00000n a2200000 a 4501
001 wils-368392
005 201998105729
020 # # |a 9780849382055  |q hardback 
020 # # |a 084938205X 
040 # # |a UiTM  |e rda 
041 0 # |a eng 
090 0 0 |a QH83  |b .A93 2007 
245 1 1 |a Automated taxon identification in systematics  |b theory, approaches and applications  |c edited by Norman MacLeod 
264 # 1 |a Boca Raton  |b CRC Press  |c 2007 
300 # # |a xvii, 339 p., [4] p. of plates.  |b ill. (some col.), map.  |c 27 cm 
490 1 # |a The Systematics Association special volume series  |v 74 
504 # # |a Includes bibliographical references and indexes 
520 # # |a The automated identification of biological objects or groups has been a dream among taxonomists and systematists for centuries. However, progress in designing and implementing practical systems for fully automated taxon identification has been frustratingly slow. Regardless, the dream has never died. Recent developments in computer architectures and innovations in software design have placed the tools needed to realize this vision in the hands of the systematics community, not several years hence, but now. And not just for DNA barcodes or other molecular data, but for digital images of organisms, digital sounds, digitized chemical data - essentially any type of digital data. Based on evidence accumulated over the last decade and written by applied researchers, Automated Taxon Identification in Systematics explores contemporary applications of quantitative approaches to the problem of taxon recognition. The book begins by reviewing the current state of systematics and placing automated taxon identification in the context of contemporary trends, needs, and opportunities. The chapters present and evaluate different aspects of current automated system designs. They then provide descriptions of case studies in which different theoretical and practical aspects of the overall group-identification problem are identified, analyzed, and discussed. A recurring theme through the chapters is the relationship between taxonomic identification, automated group identification, and morphometrics. This collection provides a bridge between these communities and between them and the wider world of applied taxonomy. The only book-length treatment that explores automated group identification in systematic context, this text also includes introductions to basic aspects of the fields of contemporary artificial intelligence and mathematical group recognition for the entire biological community. 
650 # 0 |a Biology  |x Data processing  |x Classification 
700 1 # |a MacLeod, Norman  |c 1953- 
710 1 # |a Systematics Association 
840 # # |a Systematics Association special volume  |v no. 74 
856 4 0 |z Click Here to View Status and Holdings.  |u https://opac.uitm.edu.my/opac/detailsPage/detailsHome.jsp?tid=368392 
964 # # |c BOK  |d 01 
998 # # |a 00264#1a002.8.2||00264#1b007.2||00300##a003.4.1||00300##b003.6.1||00300##c003.5.1||00520##a007.2||00520##b007.2||