A research team at Stanford University has released the papers and code for GRaD-Nav, a visual drone navigation framework that combines 3D Gaussian Splatting (3DGS) with differentiable dynamics. The work, led by Qianzhong Chen and colleagues, integrates photorealistic scene representation with efficient gradient-based learning, and is notable for transferring simulation-trained policies to real hardware without additional fine-tuning. The official GitHub repository provides training and testing scripts along with datasets.
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