Image from Google Jackets

Pattern Recognition and Image Analysis

By: By: Publication details: Noida: Pearson Education India, 2015ISBN:
  • 9789332549791
Subject(s): DDC classification:
  • 006.42 GOS
Summary: Pattern recognition is at the heart of applications ranging from the identification white blood cells to the selection of tax returns for auditing, from earthquake prediction to speech recognition. This book is An ideal introduction to pattern recognition for both higher level undergraduate and beginning graduate courses. The text provides extensive worked examples and realistic applications that have been thoroughly classroom-tested. Since images are often the input to pattern recognition systems, a survey of image processing theory is included,..covering techniques such as scene segmentation, Hough transforms,least squares, Eigenvector line fitting, and Fourier transforms. The following important aspect, of pattern recognition are also presented: Probability theory Statistical decision making, including Bayer' Theorem Nonparametric decision making, including histograms Hierarchical and partitional clustering: the advantages and risks Artificial neural networks—and how they work in real applications such as classifying sex from facial images. Readers do not need.computer science expertise or mathematical background beyond elementary calculus.
List(s) this item appears in: New Arrivals for the Month of February 2024
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Item type Current library Collection Call number Status Date due Barcode Item holds
Book Book Alliance College of Engineering and Design CSE & IT 006.42 GOS (Browse shelf(Opens below)) Available E14325
Total holds: 0



Pattern recognition is at the heart of applications ranging from the identification white blood cells to the selection of tax returns for auditing, from earthquake prediction to speech recognition. This book is An ideal introduction to pattern recognition for both higher level undergraduate and beginning graduate courses. The text provides extensive worked examples and realistic applications that have been thoroughly classroom-tested. Since images are often the input to pattern recognition systems, a survey of image processing theory is included,..covering techniques such as scene segmentation, Hough transforms,least squares, Eigenvector line fitting, and Fourier transforms. The following important aspect, of pattern recognition are also presented:
Probability theory
Statistical decision making, including Bayer' Theorem
Nonparametric decision making, including histograms Hierarchical and partitional clustering: the advantages and risks
Artificial neural networks—and how they work in real applications such as classifying sex from facial images.
Readers do not need.computer science expertise or mathematical background beyond elementary calculus.

There are no comments on this title.

to post a comment.