RePL: Pseudo-label Refinement for Semi-supervised LiDAR Semantic Segmentation

arXiv cs.CV / 4/9/2026

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Key Points

  • The paper introduces RePL, a semi-supervised learning framework for LiDAR semantic segmentation aimed at reducing error propagation and confirmation bias from noisy pseudo-labels.
  • RePL improves pseudo-label quality by using masked reconstruction to detect and correct likely pseudo-label errors, supported by a dedicated training strategy.
  • The authors provide a theoretical analysis specifying when pseudo-label refinement is beneficial and argue the required condition is mild.
  • Experiments on nuScenes-lidarseg and SemanticKITTI show that RePL significantly boosts pseudo-label quality and achieves state-of-the-art LiDAR semantic segmentation results.

Abstract

Semi-supervised learning for LiDAR semantic segmentation often suffers from error propagation and confirmation bias caused by noisy pseudo-labels. To tackle this chronic issue, we introduce RePL, a novel framework that enhances pseudo-label quality by identifying and correcting potential errors in pseudo-labels through masked reconstruction, along with a dedicated training strategy. We also provide a theoretical analysis demonstrating the condition under which the pseudo-label refinement is beneficial, and empirically confirm that the condition is mild and clearly met by RePL. Extensive evaluations on the nuScenes-lidarseg and SemanticKITTI datasets show that RePL improves pseudo-label quality a lot and, as a result, achieves the state of the art in LiDAR semantic segmentation.