globaledgesoft / Lane-Detection-Using-YOLOP-on-RB5Links
The project is intended to demonstrate Lane tracking & detection on Qualcomm’s Robotics Platform RB5. YOLOP is the architecture used to implement this solution on top of the BDD100K Dataset. The inference is done using SNPE on RB5 with DSP Hardware accelerator, and it achieves the performance of 4.15 FPS.
☆10Updated 2 years ago
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