Papers
arxiv:2512.13689

LitePT: Lighter Yet Stronger Point Transformer

Published on Dec 15
· Submitted by
Yuanwen Yue
on Dec 16
Authors:
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Abstract

A new 3D point cloud backbone model, LitePT, uses convolutions for early stages and attention for deeper layers, incorporating PointROPE for positional encoding, achieving efficient performance with fewer resources.

AI-generated summary

Modern neural architectures for 3D point cloud processing contain both convolutional layers and attention blocks, but the best way to assemble them remains unclear. We analyse the role of different computational blocks in 3D point cloud networks and find an intuitive behaviour: convolution is adequate to extract low-level geometry at high-resolution in early layers, where attention is expensive without bringing any benefits; attention captures high-level semantics and context in low-resolution, deep layers more efficiently. Guided by this design principle, we propose a new, improved 3D point cloud backbone that employs convolutions in early stages and switches to attention for deeper layers. To avoid the loss of spatial layout information when discarding redundant convolution layers, we introduce a novel, training-free 3D positional encoding, PointROPE. The resulting LitePT model has 3.6times fewer parameters, runs 2times faster, and uses 2times less memory than the state-of-the-art Point Transformer V3, but nonetheless matches or even outperforms it on a range of tasks and datasets. Code and models are available at: https://github.com/prs-eth/LitePT.

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Paper submitter

LitePT: Lighter Yet Stronger Point Transformer

LitePT is a lightweight, high-performance 3D point cloud architecture for various point cloud processing tasks. It embodies the simple principle "convolutions for low-level geometry, attention for high-level relations" and strategically places only the required operations at each hierarchy level, avoiding wasted computations. We equip LitePT with parameter-free PointROPE positional encoding to compensate for the loss of spatial layout information that occurs when discarding convolutional layers. Together, these integrated designs give rise to a state-of-the-art backbone for point cloud analysis.

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