Machine Learning in Multimedia - Kumar Swarnkar, Suman; Sharma, Annu; Somasekar, J.;(ed.) - Prospero Internet Bookshop

Machine Learning in Multimedia

Unlocking the Power of Visual and Auditory Intelligence
 
Edition number: 1
Publisher: CRC Press
Date of Publication:
 
Normal price:

Publisher's listprice:
GBP 74.99
Estimated price in HUF:
38 346 HUF (36 520 HUF + 5% VAT)
Why estimated?
 
Your price:

30 677 (29 216 HUF + 5% VAT )
discount is: 20% (approx 7 669 HUF off)
Discount is valid until: 31 December 2024
The discount is only available for 'Alert of Favourite Topics' newsletter recipients.
Click here to subscribe.
 
Availability:

Not yet published.
 
  Piece(s)

 
Short description:

This book explores the interdisciplinary nature of machine learning in multimedia, highlighting its intersections with fields such as computer vision, natural language processing, and audio signal processing. It uses case studies and examples to discuss the potential of machine learning in the realm of multimedia.

Long description:

This book explores the interdisciplinary nature of machine learning in multimedia, highlighting its intersections with fields such as computer vision, natural language processing, and audio signal processing.


Machine Learning in Multimedia: Unlocking the Power of Visual and Auditory Intelligence serves as a comprehensive guide to navigating this exciting terrain where artificial intelligence meets the rich tapestry of visual and auditory data. At its core, this book seeks to unravel the mysteries and unveil the potential of machine learning in the realm of multimedia. Whether it's enhancing user experiences in virtual environments, revolutionizing medical diagnostics, or shaping the future of entertainment, the impact of machine learning in multimedia is profound and far-reaching. The journey begins with a thorough exploration of the foundational principles of machine learning, providing readers with a solid understanding of algorithms, models, and techniques tailored specifically for multimedia data. Through clear explanations and illustrative examples, readers will gain insights into how machine learning algorithms can be trained to extract meaningful patterns and insights from diverse forms of multimedia content. Moving beyond theory, this book delves into practical implementations and real-world applications of machine learning in multimedia. Through a series of case studies and examples, readers will witness firsthand how machine learning algorithms are transforming industries and reshaping the way we interact with multimedia content. Whether it's improving image recognition accuracy in autonomous vehicles, enabling personalized recommendations in streaming platforms, or enhancing speech recognition systems for better accessibility, the possibilities are limitless.


This book will be helpful to computer science, data science, and artificial intelligence researchers, students, and professionals looking to unlock the full potential of visual and auditory intelligence through the power of machine learning.

Table of Contents:

1. Machine Learning Techniques for Accurate Prediction and Detection of Chronic Diseases  2. A Novel Approach to Multimedia Malware Detection using Bi-LSTM and Attention Mechanisms  3. Exploring Machine Learning Applications for Enhancing Security and Privacy in Multimedia IoT: A Comprehensive Review  4. Advanced Machine Learning Strategies for Road Object Detection in Multimedia Environments  5. A Multimedia-Driven Machine Learning Approach for Mastitis Detection in Dairy Cattle  6. Music Genre Classification using Long Short-Term Memory (LSTM) Networks: Analyzing Audio Spectrograms for Enhanced Multimedia Understanding  7. Deep Learning-Based Image Recognition for Autonomous Vehicles: Enhancing Safety and Efficiency  8. Identification of Heart Disease Risk in Early Ages with Bagging Techniques  9. EEG-based Emotion Recognition using SVM Classifier  10. Mortality Prediction of Neonatal due to Jaundice Using Machine Learning  11. ML Techniques Implementation for Heart Prediction in Healthcare  12. Analyzing the Performance of ML Classification Algorithms for Stroke Prediction