Published January 21, 2026 | Version v2
Conference paper Open

EZ-SP: Fast and Lightweight Superpoint-Based 3D Segmentation

  • 1. LIGM, ENPC, IP Paris, Univ Gustave Eiffel, CNRS, Marne-la-Vallée, France
  • 2. DM3L, University of Zurich, Zurich, Switzerland

Description

Superpoint-based pipelines provide an efficient alternative to point- or voxel-based 3D semantic segmentation, but are often bottlenecked by their CPU-bound partition step. We propose a learnable, fully GPU partitioning algorithm that generates geometrically and semantically coherent superpoints 13× faster than prior methods. Our module is compact (under 60k parameters), trains in under 20 minutes with a differentiable surrogate loss, and requires no handcrafted features. Combined with a lightweight superpoint classifier, the full pipeline fits in < 2 MB of VRAM, scales to multi-million-point scenes, and supports real-time inference. With 72× faster inference and 120× fewer parameters, EZ-SP matches the accuracy of point-based SOTA models across three domains: indoor scans (S3DIS), autonomous driving (KITTI-360), and aerial LiDAR (DALES). Our code and models will be accessible at github.com/drprojects/superpoint_transformer.

Files

Files (58.2 MB)

Name Size Download all
md5:fc420e193e24b2312bc1068a0547dd4e
904.5 kB Download
md5:0325edcd451ce752ec529374f2ba3e96
1.2 MB Download
md5:2791a4bd12452e91076ddd95827ddbcc
804.5 kB Download
md5:0b8dc1d3c8d0c6796079a625dbf92c83
804.5 kB Download
md5:d6fea54e3e694fcfdc7d4a1ffdeb3da5
804.5 kB Download
md5:a6f553f5b118a7e4f064a79219877639
804.5 kB Download
md5:6b22b4b86d7cf3d5935207dd72790162
804.3 kB Download
md5:911c6cdbde205f6afca3bbd1ce3392df
804.5 kB Download
md5:7d2cfe93032797b560ad25f05cb043aa
6.7 MB Download
md5:9c94ef7eb553d093333ef8c1c2072be6
12.3 MB Download
md5:038ea7bf214eee3e5098677d6e1763fc
5.4 MB Download
md5:f620e2cb01c9ea36d8d8b2ef625237ba
5.4 MB Download
md5:cdb63b1d32fac6d3f923d030c16ffc9b
5.4 MB Download
md5:c62677921ca3a7532b446e2c0ff5ccd3
5.4 MB Download
md5:ffaf3cf4a185e6072b19b21bd66ce566
5.4 MB Download
md5:366aaf1be131f17aa07c655b0736c1d2
5.4 MB Download

Additional details