Mugesh S.
SKU: 9789388590877
ISBN: 9789388590877
eISBN: 9789388590884
Rights: Worldwide
Author Name: Mugesh S.
Publishing Date: 09-August-2023
Dimension: 7.5*9.25 Inches
Binding: Paperback
Page Count: 336
Be at your A game in building Intelligent systems by leveraging Computer vision and Machine Learning.
KEY FEATURES
- Stepbystep instructions and code snippets for real world ML projects.
- Covers entire spectrum from basics to advanced concepts such as deep learning, transfer learning, and model optimization
- Loaded with practical tips and best practices for implementing machine learning with OpenCV for optimising your workflow.
DESCRIPTION
This book is an indepth guide that merges machine learning techniques with OpenCV, the most popular computer vision library, using Python. The book introduces fundamental concepts in machine learning and computer vision, progressing to practical implementation with OpenCV. Concepts related to image preprocessing, contour and thresholding techniques, motion detection and tracking are explained in a stepbystep manner using code and output snippets.
Handson projects with realworld datasets will offer you an invaluable experience in solving OpenCV challenges with machine learning. Its an ultimate guide to explore areas like deep learning, transfer learning, and model optimization, empowering readers to tackle complex tasks. Every chapter offers practical tips and tricks to build effective ML models.
By the end, you would have mastered and applied ML concepts confidently to realworld computer vision problems and will be able to develop robust and accurate machinelearning models for diverse applications.
Whether you are new to machine learning or seeking to enhance your computer vision skills, This book is an invaluable resource for mastering the integration of machine learning and computer vision using OpenCV and Python.
WHAT WILL YOU LEARN
- Learn how to work with images and perform basic image processing tasks using OpenCV.
- Implement machine learning techniques to computer vision tasks such as image classification, object detection, and image segmentation.
- Work on realworld projects and datasets to gain handson experience in applying machine learning techniques with OpenCV.
- Explore the concepts of deep learning using Tensorflow and Keras and how it can be used for computer vision tasks.
- Understand the concept of transfer learning and how pretrained models can be leveraged for new tasks.
- Utilize techniques for model optimization and deployment in resourceconstrained environments.
- Implement endtoend solutions and address challenges encountered in practical scenarios.
WHO IS THIS BOOK FOR?
This book is for everyone with a basic understanding of programming and who wants to apply machine learning in computer vision using OpenCV and Python. Whether you're a student, researcher, or developer, this book will equip you with practical skills for machine learning projects. Some familiarity with Python and machine learning concepts is assumed. Beginners too will find this book valuable as it offers clear examples and explanations for every concept.
Chapter 1: Getting Started With OpenCV
Chapter 2: Basic Image & Video Analytics in OpenCV
Chapter 3: Image Processing 1 using OpenCV
Chapter 4: Image Processing 2 using OpenCV
Chapter 5: Thresholding and Contour Techniques Using OpenCV
Chapter 6: Detect Corners and Road Lane using OpenCV
Chapter 7: Object And Motion Detection Using Opencv
Chapter 8: Image Segmentation and Detecting Faces Using OpenCV
Chapter 9: Introduction to Deep Learning with OpenCV
Chapter 10: Advance Deep Learning Projects with OpenCV
Chapter 11: Deployment of OpenCV projects
Mugesh S. works as a Data Scientist at Infosys, with a passion for leveraging datadriven insights to tackle complex challenges and drive business success. He is an engineering graduate who completed the PG program in Data Science and Engineering, as well as a Masters in Mathematics and Data Science, to deepen his understanding of the intricacies of data analytics. He has over 7 years of handson experience in SQL, Python, ETL projects, and machine learning projects, including time series forecasting, Chatbot, people face detection, face recognition, Statistical Data Analysis, Computer vision, NLP, and SQL/No SQL. He possesses a good knowledge of version control systems and cloud computing systems. In addition, he has an excellent work ethic and is an influential team member.
He has been an instrumental force in delivering successful datadriven projects across diverse industries, earning accolades for his ability to translate raw data into meaningful business intelligence. His commitment to professional growth is evident through his prestigious certifications, including the esteemed Infosyscertified AI professional and Infosyscertified Automation professional certifications.
These credentials underscore his dedication to staying at the forefront of advancements in the everevolving data science landscape. With an insatiable curiosity and an analytical mindset, he is known for his meticulous approach to problemsolving and his proficiency in designing cuttingedge machinelearning models. His collaborative nature has made him a valuable team player, effectively collaborating with colleagues and stakeholders to drive innovation and achieve project milestones. Beyond his technical expertise, his passion for data science lies in its potential to create a positive societal impact.
He is driven by the belief that datadriven insights hold the key to solving complex challenges and improving the lives of people worldwide. In his spare time, he enjoys exploring new avenues in data science, experimenting with emerging technologies, and sharing his knowledge through mentorship and educational initiatives.
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