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Beginnt 4 June 2026 17:16

Endet 4 June 2026

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Semantic Segmentation in Satellite Imagery

Explore advanced techniques in deep learning for image segmentation and object detection, focusing on practical applications in autonomous driving.
Toronto Machine Learning Series (TMLS) via YouTube

Toronto Machine Learning Series (TMLS)

6076 Kurse


28 minutes

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Übersicht

Explore advanced techniques in deep learning for image segmentation and object detection, focusing on practical applications in autonomous driving.

Lehrplan

  • Course Introduction
  • Overview of Semantic Segmentation
    Importance in Satellite Imagery and Autonomous Driving
  • Fundamentals of Image Segmentation
  • Introduction to Image Segmentation Techniques
    Classical Methods vs. Deep Learning Approaches
  • Deep Learning Basics
  • Neural Networks Overview
    Convolutional Neural Networks (CNNs) Essentials
  • Advanced Semantic Segmentation Techniques
  • Fully Convolutional Networks (FCNs)
    U-Net Architecture
    DeepLab Variants
  • Data Preparation and Annotation
  • Satellite Imagery Datasets
    Image Annotation Tools and Techniques
    Data Augmentation for Segmentation Models
  • Model Training and Optimization
  • Training Strategies and Best Practices
    Loss Functions for Segmentation
    Hyperparameter Tuning
  • Evaluation Metrics
  • Intersection over Union (IoU)
    Precision, Recall, and F1 Score
    Model Evaluation in Real-world Scenarios
  • Object Detection in Satellite Imagery
  • Introduction to Object Detection
    YOLO and Faster R-CNN Architectures
    Integrating Segmentation and Detection
  • Applications in Autonomous Driving
  • Semantic Segmentation for Navigation
    Detecting Vehicles, Pedestrians, and Obstacles
    Challenges and Solutions in Real-time Processing
  • Practical Implementation
  • Tools and Frameworks (e.g., TensorFlow, PyTorch)
    Building a Segmentation Model from Scratch
    Deploying Models on Edge Devices
  • Case Studies and Industry Applications
  • Real-world Projects and Companies
    Future Trends in Semantic Segmentation
  • Capstone Project
  • Designing and Implementing Your Own Segmentation Solution
    Presentation and Peer Review
  • Course Summary and Next Steps
  • Recap of Key Concepts
    Resources for Further Learning

Fachgebiete

Data Science