LiPS is a streamlined panoptic segmentation architecture that matches heavier models in accuracy while delivering up to 4.5x higher throughput and 6.8x lower computation on standard benchmarks.
LiPS: Lightweight Panoptic Segmentation for Resource-Constrained Robotics
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Panoptic segmentation is a key enabler for robotic perception, as it unifies semantic understanding with object-level reasoning. However, the increasing complexity of state-of-the-art models makes them unsuitable for deployment on resource-constrained platforms such as mobile robots. We propose a novel approach called LiPS that addresses the challenge of efficient-to-compute panoptic segmentation with a lightweight design that retains query-based decoding while introducing a streamlined feature extraction and fusion pathway. It aims at providing a strong panoptic segmentation performance while substantially lowering the computational demands. Evaluations on standard benchmarks demonstrate that LiPS attains accuracy comparable to much heavier baselines, while providing up to 4.5 higher throughput, measured in frames per second, and requiring nearly 6.8 times fewer computations. This efficiency makes LiPS a highly relevant bridge between modern panoptic models and real-world robotic applications.
fields
cs.RO 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
-
LiPS: Lightweight Panoptic Segmentation for Resource-Constrained Robotics
LiPS is a streamlined panoptic segmentation architecture that matches heavier models in accuracy while delivering up to 4.5x higher throughput and 6.8x lower computation on standard benchmarks.