While there is no single comprehensive guide that covers all aspects of computer vision, there are many resources that collectively provide a complete understanding. Beginners can start with online courses such as Andrew Ng’s Deep Learning Specialization or Computer Vision Fundamentals with OpenCV on Coursera. For books, Computer Vision: Algorithms and Applications by Richard Szeliski offers a broad overview of fundamental concepts. Blogs, tutorials, and open-source repositories on platforms like GitHub provide hands-on experience. Advanced topics, such as deep learning for computer vision, are well-covered in books like Deep Learning for Vision Systems by Mohamed Elgendy. Combining these resources with active participation in projects, competitions like Kaggle, and research papers from conferences such as CVPR and ICCV can provide a holistic learning experience.
Is there complete guide for computer vision?

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