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AI Fundamentals: Master the Core of Artificial Intelligence

2.3. Computer Vision

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Computer Vision (CV) is a field of Artificial Intelligence (AI) that enables computers to see, interpret, and understand visual information from the world — much like human vision.

Instead of just storing images, CV allows machines to:

  • Detect objects 👀

  • Recognize faces 🙂

  • Track movements 🚗

  • Interpret scenes 🌆

Computer Vision = Giving computers the ability to see and understand visual data so they can make smart decisions.

How It Works

  1. Input → Computer receives an image or video (raw pixels).

  2. Processing → AI models analyze shapes, colors, patterns, and motion.

  3. Output → The system identifies or classifies what it sees (e.g., “This is a cat” 🐱, “That person is smiling” 😀).

Everyday Examples

  • Autonomous Systems: Self-driving cars (object detection, pedestrian recognition).

  • Healthcare: Medical imaging analysis (X-rays, MRIs, CT scans).

  • Security & Surveillance: Monitoring and threat detection.

  • Non-Robotic Uses: Face recognition software in smartphones and social platforms.

  • Virtual Reality (VR): Enhancing education, entertainment, and communication with immersive experiences.

Main Families of Computer Vision Models

1. Convolutional Neural Networks (CNNs)

  • Foundation: Core architecture for processing high-dimensional image data.

  • Functionality:

    • Recognize spatial hierarchies in images.

    • Detect features from basic (edges, colors)complex (objects, scenes).

2. Transformers

  • Application:

    • Growing use in computer vision.

    • Widely applied in generative AI tasks such as image synthesis and captioning.

3. Generative Adversarial Networks (GANs)

  • Purpose:

    • Specialized in creating realistic images by training two networks (generator vs. discriminator) in competition.

4. Specialized Networks

  • Examples:

    • U-Net → Used for medical image segmentation (e.g., tumor detection).

    • EfficientNet → Optimizes performance while reducing computational cost.

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Instructor

Pijush Saha

Pijush Saha is the Digital Marketing Consultant, Coach and Ex Google Employee. He has been working for 12 years in the digital marketing sector involving predominantly in Performance Marketing including SEO, Media Buying, & Web Analytics.