模式識別的馬爾可夫模型(Markov modelsfor pattern recognition from theory to applications)
定 價:89 元
- 作者:Gernot A. Fink[著]
- 出版時間:2023/1/1
- ISBN:9787519296940
- 出 版 社:世界圖書出版北京有限公司
- 中圖法分類:O211.62
- 頁碼:306
- 紙張:膠版紙
- 版次:1
- 開本:24cm
本書為修訂和擴展的新版本,新版里包括更為詳細的EM算法處理、有效的近似維特比訓練程序描述,和基于n一最佳搜索的困惑測度和多通解碼覆蓋的理論推導。為了支持對馬爾可夫模型理論基礎的討論,還特別強調(diào)了實際算法的解決方案。具體來說,本書的特點如下:介紹了馬爾可夫模型的形式化框架;涵蓋了概率量的魯棒處理;提出了具體應用領域隱馬爾可夫模型的配置方法;描述了高效處理馬爾可夫模型的重要方法,以及模型對不同任務的適應性;研究了在復雜解空間中由馬爾可夫鏈和隱馬爾可夫模型聯(lián)合應用而產(chǎn)生的搜索算法:回顧了馬爾可夫模型的。
The development of pattern recognition methods on the basis of so-called Markov models is tightly coupled to the technological progress in the field of automatic speech recognition. Today, however, Markov chain and hidden Markov models are also applied in many other fields where the task is the modeling and analysis of chronologically organized data as, for example, genetic sequences or handwritten texts, Nevertheless,in monographs, Markov models are almost exclusively treated in the context of automatic speech recognition and not as a general, widely applicable tool of statistical pattern recognition.
In contrast, this book puts the formalism of Markov chain and hidden Markov models at the center ofits considerations. With the example of the three main application areas of this technology-namely automatic speech recognition, handwriting recogrution, and the analysis of genetic sequences-this book demonstrates which adjustments to the respective application area are necessary and how these are realized in current pattern recognition systems. Besides the treatment of the theoretical foundations of the modeling, this book puts special emphasis on the presentation of algorithmic solutions, which are indispensable for the successful practical application of Markov model technology. Therefore, it addresses researchers and practitioners from the field of pattern recognition as well as graduate students with an appropriate major field of study, who want to devote themselves to speech or handwriting recognition, bioinformatics, or related problems and want to gain a deeper understanding of the application of statistical methods in these areas.
The origins of this book lie in the author's extensive research and development in the field of statistical pattern recognition, which initially led to a German book published by Teubner, Wiesbaden, in 2003. The first edition published by Springer in 2008 was basically a translation of the German version with several updates and modifications addressing an international audience. The current second edition is the result of a thorough revision of the complete text including a number of extensions and additions of material as, for example, a more thorough treatment of the EM algorithm, a description of an efficient approximate Viterbi-training procedure, a theoretical derivation of the perplexity measure, and the treatment of multi-pass decoding based on n-best search. Furthermore, this edition contains a presentation of Bag-of-Features hidden Markov models-a recent extension of the hidden Markov model formalism developed in the author's research group.
This second edition would not have been possible without the support of a number of people. First of all, I would like to thank Simon Rees, Springer London,for encouraging me to prepare this thorough revision of the manuscript. I am also grateful to him and Hermann Engesser, Springer-Verlag, Heidelberg, for their help in resolving legal issues related to the transition of the book from its initial German version to the current second English edition.