Exploring Easy Boosts for Lidar Semantic Scene Completion
Researchers have identified simple methods to enhance Lidar semantic scene completion (SSC) performance without altering model architecture. By incorporating semantic pseudo-labels from existing segmentors and adding visibility information to distinguish empty from unknown spaces, older models can become competitive with or even surpass state-of-the-art systems. The study indicates that high-quality semantic priors are a key factor in improving mean Intersection over Union (mIoU) gains. AI
IMPACT Simple data augmentation techniques can significantly improve Lidar scene completion models, potentially reducing the need for complex architectural changes.