Home >Courses >AI in Autonomous Vehicles

NSTC Logo
Home >Courses >AI in Autonomous Vehicles

Mentor Based

AI in Autonomous Vehicles

Drive the Future: Master AI for Autonomous Vehicles and Self-Driving Technologies

Register NowExplore Details

Early access to e-LMS included

  • Mode: Online/ e-LMS
  • Type: Mentor Based
  • Level: Moderate
  • Duration: 3 Weeks

About This Course

The program delves into the AI and robotics techniques that empower autonomous vehicles, including computer vision, object detection, sensor fusion from LIDAR and radar, and motion planning algorithms. This hands-on course also covers real-world challenges like obstacle avoidance, lane detection, and decision-making for AVs.

Aim

This program teaches the key technologies and AI methodologies that enable autonomous vehicles (AVs) to perceive, decide, and navigate through complex environments. Participants will gain knowledge of deep learning, sensor fusion, and path planning techniques essential for AV systems.

Program Objectives

  • Learn the core AI technologies that enable self-driving vehicles.
  • Master sensor fusion, perception, and motion planning for AVs.
  • Understand computer vision techniques for road and object detection.
  • Implement real-time decision-making with reinforcement learning.
  • Gain hands-on experience in building an AI-driven autonomous vehicle system.

Program Structure

  1. Introduction to Autonomous Vehicles and AI
    • Overview of Autonomous Vehicle Levels (SAE Levels 0-5)
    • Role of AI in Autonomous Driving
    • Use Cases and Applications (Self-Driving Cars, Drones, Delivery Robots)
  2. Sensors and Perception in Autonomous Vehicles
    • Types of Sensors: LIDAR, Radar, Cameras, Ultrasonics
    • Sensor Fusion for Accurate Environment Perception
    • AI for Perception: Object Detection, Lane Detection, and Segmentation
  3. Computer Vision in Autonomous Driving
    • Basics of Computer Vision for Autonomous Vehicles
    • Deep Learning Techniques for Object Detection (YOLO, SSD)
    • Real-Time Image Processing for Vehicle Cameras
  4. Localization and Mapping
    • Simultaneous Localization and Mapping (SLAM)
    • GPS, IMU, and Dead Reckoning for Vehicle Localization
    • AI Techniques for Accurate Mapping (Visual SLAM, Particle Filters)
  5. Path Planning and Motion Control
    • Path Planning Algorithms (Dijkstra, A*, RRT)
    • AI-Based Path Planning: Reinforcement Learning for Autonomous Navigation
    • Motion Control Techniques (PID, MPC) for Smooth Driving
  6. Deep Learning for Autonomous Vehicles
    • Neural Networks for Perception and Decision-Making
    • Convolutional Neural Networks (CNNs) for Image Processing
    • Recurrent Neural Networks (RNNs) for Sequential Data (Sensor Data)
  7. Reinforcement Learning in Autonomous Driving
    • Fundamentals of Reinforcement Learning (Q-Learning, Policy Gradient)
    • Applying RL to Decision-Making in Autonomous Vehicles
    • Case Studies: Self-Learning Driving Agents
  8. Vehicle-to-Everything (V2X) Communication
    • Communication between Vehicles (V2V), Infrastructure (V2I), and Networks (V2N)
    • AI for Optimizing V2X Communication
    • Safety and Traffic Management through AI-Driven V2X Systems
  9. Autonomous Vehicle Software Architecture
    • Overview of Autonomous Driving Stacks (Apollo, Autoware)
    • ROS (Robot Operating System) for Autonomous Vehicles
    • AI Integration into Autonomous Vehicle Software Pipelines
  10. Simulation and Testing of Autonomous Vehicles
    • Virtual Environments for Testing Autonomous Vehicles (CARLA, AirSim)
    • AI for Simulation-Based Testing and Validation
    • Reinforcement Learning for Simulated Driving Scenarios
  11. Safety, Ethics, and Regulations in Autonomous Driving
    • AI for Safety-Critical Systems in Autonomous Vehicles
    • Ethical Considerations in AI-Driven Decision Making
    • Legal and Regulatory Framework for Autonomous Vehicles

Who Should Enrol?

AI engineers, robotics engineers, data scientists, and software developers focusing on autonomous systems.

Program Outcomes

  • Ability to build and deploy AI models for autonomous vehicle perception, planning, and decision-making.
  • Mastery in using LIDAR, radar, and computer vision for self-driving cars.
  • Hands-on experience with sensor fusion, navigation, and AI-driven control systems.

Fee Structure

Discounted: ₹8499 | $112

We accept 20+ global currencies. View list →

What You’ll Gain

  • Full access to e-LMS
  • Real-world dry lab projects
  • 1:1 project guidance
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate & e-Marksheet

Join Our Hall of Fame!

Take your research to the next level with NanoSchool.

Publication Opportunity

Get published in a prestigious open-access journal.

Centre of Excellence

Become part of an elite research community.

Networking & Learning

Connect with global researchers and mentors.

Global Recognition

Worth ₹20,000 / $1,000 in academic value.

Need Help?

We’re here for you!


(+91) 120-4781-217

★★★★★
Prediction of Protein Structure Using AlphaFold: An Artificial Intelligence (AI) Program

Nice clear presentation.

Liam Cassidy
★★★★★
Green Catalysts 2024: Innovating Sustainable Solutions from Biomass to Biofuels

Very helpful to us.

Amit Das
★★★★★
AI for Federated Learning: Decentralized Data and Privacy-Preserving Models

I need invoice with the following data:
Tera Srl
Via Martin Luther King, 35
70014 Conversano (Ba) - ITA
VAT ID: IT06597060729

Please, send it to leonardo.cici@terasrl.it

Daniel Lotano
★★★★★
AI-Driven Design of Smart Polymer Composites: From Concept to Manufacturing

Well presented.

Daniel Argilashki

View All Feedbacks →

Stay Updated


Join our mailing list for exclusive offers and course announcements

Ai Subscriber