Published 1/2025
MP4 | Video: h264, 1920×1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.89 GB | Duration: 5h 13m
Unlock Real-World AI Potential with Cutting-Edge Deep Learning and Computer Vision Techniques
What you’ll learn
Introduction to Computer Vision: Understand the core principles and applications of computer vision in AI.
Deep Learning Models for Computer Vision: Learn how advanced deep learning models revolutionize computer vision tasks.
Image Processing with Deep Learning: Explore techniques to enhance and analyze images using deep learning methods.
Computer Vision Image Segmentation Explained: Master the fundamentals of dividing images into meaningful segments for analysis.
Image Features and Detection for Computer Vision: Discover how to extract and detect key image features to enable AI understanding.
SIFT (Scale-Invariant Feature Transform) Explained: Learn the mechanics of SIFT for recognizing and matching image features.
Object Detection in Computer Vision: Develop skills to identify and classify objects within images and video.
Datasets and Benchmarks in Computer Vision: Explore commonly used datasets and performance benchmarks for computer vision projects.
Segmentation in Computer Vision: Dive deeper into methods for isolating objects and regions within an image.
Supervised Segmentation Methods in Computer Vision: Learn how labeled data is used to train models for accurate image segmentation.
Unlocking the Power of Optical Character Recognition (OCR): Discover how OCR is applied to extract text from images and scanned documents.
Handwriting Recognition vs. Printed Text: Understand the challenges and techniques for recognizing handwritten and printed text.
Facial Recognition and Analysis in Computer Vision: Learn how AI recognizes and analyzes human faces for identification and emotion detection.
Facial Recognition Algorithms and Techniques: Explore state-of-the-art algorithms and approaches used in facial recognition systems.
Camera Models and Calibrations in Computer Vision: Gain insights into camera parameters and how to model their effects in computer vision.
Camera Calibration Process in Computer Vision: Master the techniques for calibrating cameras to improve accuracy in vision tasks.
Motion Analysis and Tracking in Computer Vision: Learn methods for analyzing and tracking object movements within video streams.
Segmentation and Grouping Moving Objects: Understand how to isolate and group objects in motion for dynamic scene analysis.
3D Vision and Reconstruction in Computer Vision: Explore techniques for creating 3D models from 2D images and scenes.
Stereoscopic Vision and Depth Perception in Computer Vision: Learn how to replicate depth perception using stereoscopic imaging techniques.
Applications of Computer Vision: Discover the broad spectrum of industries where computer vision creates transformative impact.
Applications of Image Segmentation in Computer Vision: Explore real-world uses of image segmentation in healthcare, automotive, and more.
Real-Time Case Study Applications of Computer Vision: Apply your learning to practical, real-time computer vision projects and case studies.
Requirements
This masterclass is designed for everyone—no prior experience is required, as the concepts are explained in a simple and accessible manner.
Description
1. Introduction to Computer VisionOverview of Computer Vision and its significance in AI.Understanding how computers interpret and analyze visual data.2. Deep Learning Models for Computer VisionIntroduction to Convolutional Neural Networks (CNNs) and their role in Computer Vision.Key models like AlexNet, VGG, ResNet, and EfficientNet.3. Image Processing with Deep LearningTechniques for preprocessing images (e.g., normalization, resizing, augmentation).Importance of image filtering and transformations.4. Computer Vision Image Segmentation ExplainedExplanation of image segmentation and its use in dividing images into meaningful regions.Differences between semantic and instance segmentation.5. Image Features and Detection for Computer VisionUnderstanding feature extraction (edges, corners, blobs).Techniques for feature detection and matching.6. SIFT (Scale-Invariant Feature Transform) ExplainedExplanation of SIFT and its role in identifying key points and matching across images.Applications of SIFT in image stitching and object recognition.7. Object Detection in Computer VisionKey algorithms: YOLO, SSD, Faster R-CNN.Techniques for detecting objects in real-time.8. Datasets and Benchmarks in Computer VisionOverview of popular datasets (e.g., COCO, ImageNet, Open Images).Importance of benchmarks in evaluating models.9. Segmentation in Computer VisionExplanation of segmentation techniques (e.g., region-based and clustering-based methods).Importance of accurate segmentation for downstream tasks.10. Supervised Segmentation Methods in Computer VisionOverview of deep learning methods like U-Net and Mask R-CNN.Supervised learning approaches for segmentation tasks.11. Unlocking the Power of Optical Character Recognition (OCR)Explanation of OCR and its role in text recognition from images.Applications in document processing, ID verification, and automation.12. Handwriting Recognition vs. Printed TextDifferences in recognizing handwriting and printed text.Challenges and deep learning techniques for each.13. Facial Recognition and Analysis in Computer VisionApplications of facial recognition (e.g., authentication, surveillance).Understanding face detection and facial analysis methods.14. Facial Recognition Algorithms and TechniquesPopular algorithms like Eigenfaces, Fisherfaces, and deep learning models.Role of embeddings and feature vectors in facial recognition.15. Camera Models and Calibrations in Computer VisionOverview of camera models and intrinsic/extrinsic parameters.Basics of lens distortion and its correction.16. Camera Calibration Process in Computer VisionSteps for calibrating a camera and improving image accuracy.Tools and libraries for camera calibration.17. Motion Analysis and Tracking in Computer VisionTechniques for motion detection and object tracking (e.g., optical flow, Kalman filters).Applications in surveillance and autonomous vehicles.18. Segmentation and Grouping Moving ObjectsMethods for segmenting and grouping moving objects in videos.Applications in traffic monitoring and video analytics.19. 3D Vision and Reconstruction in Computer VisionIntroduction to 3D vision and its importance in depth perception.Methods for reconstructing 3D structures from 2D images.20. Stereoscopic Vision and Depth Perception in Computer VisionExplanation of stereoscopic vision and its use in 3D mapping.Applications in robotics, AR/VR, and 3D modeling.21. Applications of Computer VisionBroad applications in healthcare, agriculture, retail, and security.Real-world examples of AI-driven visual solutions.22. Applications of Image Segmentation in Computer VisionUse cases in medical imaging, self-driving cars, and satellite imagery.How segmentation helps in data analysis and decision-making.23. Real-Time Case Study Applications of Computer VisionEnd-to-end case studies in self-driving cars, facial recognition, and augmented reality.Practical insights into implementing Computer Vision solutions in real-time scenarios.This comprehensive course ensures that learners gain both theoretical and practical knowledge to excel in Computer Vision, paving the way for exciting opportunities in AI-powered fields.
This course is ideal for anyone aspiring to learn future-ready skills and pursue careers such as Deep Learning Engineer, Data Scientist, Senior Data Scientist, AI Scientist, AI Engineer, AI Researcher, or AI Expert.
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