| File Name: | Building a Self-Controlled Car through AI inferences & IoT |
| Content Source: | https://www.udemy.com/course/building-a-self-controlled-car-through-ai-inferences-iot |
| Genre / Category: | Other Tutorials |
| File Size : | 2.1 GB |
| Publisher: | Dommaraju Sireesha |
| Updated and Published: | October 27, 2025 |
- Implement real-time object detection using YOLO and OpenCV
- Integrate IoT sensors (ultrasonic) for autonomous navigation
- Integrate live inference models on Arduino board
- Design control systems for steering, braking, and obstacle avoidance
- Build and test a mini self-driving car with Python-based control logic
Autonomous vehicles represent a transformative leap in transportation, driven by the convergence of computer vision, IoT, and real-time inference technologies. At the heart of this innovation lies computer vision, which enables vehicles to “see” and interpret their surroundings using cameras and deep learning models. Through techniques like object detection, lane tracking, and semantic segmentation, vehicles can identify pedestrians, traffic signs, and other vehicles with remarkable accuracy.
Complementing this is the Internet of Things (IoT), which connects a network of sensors—ultrasonic (UV sensors) and ESP32 camera and Arduino, that continuously stream data to the vehicle’s onboard systems. IoT not only enhances situational awareness but also enables vehicle-to-everything (V2X) communication, allowing cars to interact with infrastructure and other vehicles for coordinated movement.
For educators and developers, mastering these systems opens doors to innovation in smart cities, robotics, and industrial automation. This course empowers learners to explore that future hands-on, combining theory with practical projects that bring autonomous systems to life.
Who this course is for:
- This course is ideal for learners passionate about robotics, AI, computer vision and hands-on engineering in object detection. It’s designed for architects, software engineers, data scientists, leaders and professionals eager to explore computer vision, IoT, and autonomous systems through practical projects. If you have basic Python and electronics knowledge, you’ll learn to build a sensor-based self-driving car using OpenCV, Ardiuno, and real-time inference. Engineering students can apply theory to real-world applications, while makers and educators gain tools for innovation and teaching. Whether you’re preparing for a career in smart mobility or simply love intelligent machines, this course offers a gateway into the future of autonomous technology.
DOWNLOAD LINK: Building a Self-Controlled Car through AI inferences & IoT
Building_a_Self-Controlled_Car_through_AI_inferences_IoT.part1.rar – 1000.0 MB
Building_a_Self-Controlled_Car_through_AI_inferences_IoT.part2.rar – 1000.0 MB
Building_a_Self-Controlled_Car_through_AI_inferences_IoT.part3.rar – 168.7 MB
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