Practical Machine Learning for Computer Vision by Valliappa Lakshmanan
- Publisher: COMPUTER SCIENCE
- Availability: In Stock
- SKU: 43778
- Number of Pages: 480
Rs.1,090.00
Rs.1,495.00
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Practical Machine Learning for Computer Vision
Author: Valliappa Lakshmanan
Binding: Paperback
Paper Quality: Black & White Paper
Category: Computer Science / Machine Learning / Computer Vision
Recommended For: Data scientists, machine learning engineers, and developers interested in applying ML techniques to computer vision projects.
Key Points:
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End-to-End Workflow for Computer Vision: The book provides a comprehensive, step-by-step approach to developing machine learning models for image-based tasks, guiding readers through the entire process from data collection to model deployment.
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Focus on Practical Implementation: Emphasizes hands-on coding with real-world examples, teaching how to implement and refine models using popular tools like TensorFlow, Keras, and OpenCV.
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Introduction to Machine Learning and Deep Learning: The book introduces fundamental machine learning concepts and builds up to more complex deep learning techniques, making it accessible for both beginners and those with some experience in machine learning.
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Convolutional Neural Networks (CNNs): A significant portion of the book is dedicated to CNNs, a key technique in computer vision. It covers architecture, training, and optimization, providing the foundation for building powerful image classification models.
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Data Preprocessing and Augmentation: Discusses crucial techniques for preparing image data, including preprocessing, augmentation, and normalization, which are essential for improving model performance.
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Advanced Vision Tasks: Covers advanced computer vision tasks such as object detection, segmentation, and transfer learning, helping readers extend their skills and apply machine learning to more complex image-based problems.
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Code Examples and Jupyter Notebooks: The book provides numerous code snippets and complete examples in Python, using Jupyter Notebooks to facilitate hands-on learning and experimentation.
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Model Evaluation and Optimization: Explains how to evaluate model performance using various metrics and techniques, and provides strategies for fine-tuning models to improve accuracy and efficiency.
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Integration with Real-World Applications: Includes practical advice for deploying computer vision models in production environments, discussing model optimization, scalability, and real-time inference.
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Use of Transfer Learning: Introduces the concept of transfer learning, allowing readers to leverage pre-trained models and fine-tune them for their specific tasks, reducing the amount of data and time required for training.
Conclusion:
Practical Machine Learning for Computer Vision by Valliappa Lakshmanan, Martin Görner, and Ryan Gillard is a highly practical and accessible resource for anyone looking to apply machine learning techniques to computer vision projects. Through clear explanations and real-world examples, the authors offer readers the tools they need to successfully build and deploy image-based models. Whether you're a beginner seeking to understand the basics or an experienced practitioner aiming to deepen your expertise, this book provides a valuable and hands-on guide to mastering machine learning for computer vision.
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Writer ✤
Valliappa Lakshmanan (Author), Martin Görner (Author), Ryan Gillard (Author)