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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:

  1. 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.

  2. 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.

  3. 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.

  4. 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.

  5. Data Preprocessing and Augmentation: Discusses crucial techniques for preparing image data, including preprocessing, augmentation, and normalization, which are essential for improving model performance.

  6. 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.

  7. 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.

  8. 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.

  9. Integration with Real-World Applications: Includes practical advice for deploying computer vision models in production environments, discussing model optimization, scalability, and real-time inference.

  10. 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)

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