Mastering Computer Vision: Basics, Deep Learning, and Real-World Applications
Explore the Foundations of Computer Vision, Harness Deep Learning Techniques, and Unlock Innovative Real-World Solutions
About This Course
The Computer Vision workshop focuses on the principles and practical techniques of enabling machines to process, analyze, and interpret visual data. Participants will explore key concepts such as image processing, object detection, and neural networks. Through hands-on sessions and industry use cases, this program provides a solid foundation for understanding the role of computer vision in fields like healthcare, autonomous vehicles, and retail.
Aim
To introduce participants to the fundamentals and applications of Computer Vision, enabling them to design, implement, and deploy vision-based AI systems for solving real-world problems.
Workshop Objectives
- To introduce participants to the fundamentals of Computer Vision and its applications.
- To train participants in developing and deploying vision-based AI solutions.
- To explore real-world use cases and challenges in Computer Vision.
- To provide hands-on experience with state-of-the-art Computer Vision tools and frameworks.
- To prepare participants for advanced roles in AI and Computer Vision.
Workshop Structure
Day 1: Introduction to Computer Vision
- What is Computer Vision?
- Overview of computer vision and its real-world applications (e.g., facial recognition, autonomous vehicles, healthcare).
- Core Concepts of Computer Vision
- Pixels, images, and image processing basics.
- Common tasks: Object detection, image classification, and segmentation.
- Getting Started with Tools
- Installing and setting up Python libraries: OpenCV, NumPy, and Matplotlib.
- Basic image operations: Loading, displaying, resizing, and cropping.
Day 2: Image Processing and Feature Extraction
- Image Preprocessing Techniques
- Converting images to grayscale and binary.
- Applying filters: Gaussian blur, edge detection (Sobel, Canny).
- Feature Extraction
- Detecting features: Corners, edges, and contours.
- Understanding keypoint detection methods: SIFT, ORB.
- Hands-On Session
- Building a basic image classification pipeline using OpenCV.
Day 3: Deep Learning in Computer Vision
- Deep Learning for Vision Tasks
- Introduction to Convolutional Neural Networks (CNNs).
- Popular architectures: VGG, ResNet, and MobileNet.
- Pretrained Models and Transfer Learning
- Using TensorFlow/Keras for applying pretrained models to image datasets.
- Hands-on: Classifying images with a pretrained model (e.g., ResNet50).
- Real-World Applications and Future Trends
- Applications: Autonomous vehicles, facial recognition, healthcare imaging.
- Emerging trends: GANs, real-time object detection, and AR/VR.
Who Should Enrol?
- AI and machine learning professionals
- Students and researchers in computer science, robotics, and AI
- Developers interested in visual data processing
- Professionals in healthcare, retail, automotive, and security sectors
Important Dates
Registration Ends
02/15/2025
IST 02:00 PM
Workshop Dates
02/15/2025 – 02/17/2025
IST 03:00 PM
Workshop Outcomes
- Solid understanding of Computer Vision concepts and techniques
- Practical skills in building and deploying vision-based models
- Proficiency in tools and frameworks for Computer Vision projects
- Insights into challenges and emerging trends in visual AI
- Preparedness for roles in Computer Vision across various industries
Fee Structure
Student
₹1999 | $45
Ph.D. Scholar / Researcher
₹2499 | $50
Academician / Faculty
₹2999 | $55
Industry Professional
₹4999 | $75
What You’ll Gain
- Live & recorded sessions
- e-Certificate upon completion
- Post-workshop query support
- Hands-on learning experience
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