TL;DR
Industrial3D introduces a large, detailed terrestrial LiDAR dataset for industrial infrastructure, establishing a comprehensive benchmark to evaluate and improve 3D scene understanding methods in challenging industrial environments.
Contribution
The paper provides the largest industrial LiDAR dataset to date and a cross-paradigm benchmark, highlighting domain transfer challenges and setting a new standard for industrial 3D scene understanding.
Findings
The best supervised method achieves 55.74% mIoU.
Zero-shot Point-SAM reaches only 15.79% mIoU.
Domain transfer gap is due to class imbalance and geometric ambiguity.
Abstract
Automated semantic understanding of dense point clouds is a prerequisite for Scan-to-BIM pipelines, digital twin construction, and as-built verification--core tasks in the digital transformation of the construction industry. Yet for industrial mechanical, electrical, and plumbing (MEP) facilities, this challenge remains largely unsolved: TLS acquisitions of water treatment plants, chiller halls, and pumping stations exhibit extreme geometric ambiguity, severe occlusion, and extreme class imbalance that architectural benchmarks (e.g., S3DIS or ScanNet) cannot adequately represent. We present Industrial3D, a terrestrial LiDAR dataset comprising 612 million expertly labelled points at 6 mm resolution from 13 water treatment facilities. At 6.6x the scale of the closest comparable MEP dataset, Industrial3D provides the largest and most demanding testbed for industrial 3D scene understanding…
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