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Vision-Based Gate Detection (YOLOv5)
Fine-tuned detection + lightweight post-processing for robust racing gate localization.
Computer Vision YOLOv5 Robotics
Overview
Developed a vision-based gate detection system using YOLOv5 for autonomous drone racing. Fine-tuned the model on custom drone racing gate datasets and implemented lightweight post-processing algorithms to achieve robust real-time localization. The system handles varying lighting conditions, motion blur, and perspective distortions common in high-speed flight scenarios.
Detailed project documentation, images, and technical write-up coming soon.