Digital Image Processing using MATLAB: ZERO to HERO Practical Approach with Source Code [Audiobook]
By: Arsath Natheem
Narrated by: Virtual Voice
English | 11-20-24 | B0DJH96MHZ | 2h 13m | M4B@125 kbps | 121.07 MB
This book will help you learn all about digital image processing Importance, and necessity of image processing stems from application areas the first being the Improvement of data for individual interpretation and the second being that the Processing of a spectacle data for an machine perception. Digital image processing includes a assortment of applications such as remote sensing, image and information storage for transmission in acoustic imaging, medical imaging, business applications , Forensic sciences and industrial automation. Images are helpful in tracking of earth resources mapping, and forecast of urban populations, agricultural crops, climate forecasting, flooding and fire control. Space imaging applications include comprehension and analyzation of objects contained in images obtained from deep space-probe missions. There are also medical programs such as processing of X-Rays, Ultrasonic scanning, Electron micrographs, Magnetic Resonance Imaging, Nuclear Magnetic Resonance Imaging, etc.. In addition to the aforementioned applications, digital image processing is being used to solve a variety of issues. Even unrelated, these problems commonly require methods effective at improving information. The Image processing Procedures like restoration and Image enhancement are used to procedure images that were degraded or blurred. Powerful uses of image processing concepts are observed in defense astronomy, biology, medical and industrial applications. As per Medical Imaging is concerned almost all of the pictures could be utilized in the discovery of tumors or for viewing the patients. The current key field of use of digital image processing (DIP) methods is in solving the issue of machine vision so as to attain superior results.
CONTENTS OF THIS BOOK:
Chapter 1: Basic Morphological Operation with MATLAB Source Code
Chapter 2: Image Segmentation with MATLAB Source Code
Chapter 3: Image intensity transformation with MATLAB Source Code
Chapter 4: Histogram Equalization with MATLAB Source Code
Chapter 5: Spatial Intensity Resolution with MATLAB Source Code
Chapter 6: Image Enhancement in Frequency Filtering with MATLAB Source Code
Chapter 7: Image Enhancement in Spatial Filtering with MATLAB Source Code
Chapter 8: Color Image Processing with MATLAB Source Code
Chapter 9: DFT Analysis with MATLAB Source Code
Chapter 10: Basic Thresholding Function with MATLAB Source Code
Chapter 11: Image Sampling and Quantization with MATLAB Source Code
Chapter 12: Various Image Transformation with MATLAB Source Code