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Main Authors: A, Pranav, B, Shashank, Siddappa, Pranav, Seuss, Dominik, Moharir, Minal, KN, Subramanya
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.05372
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author A, Pranav
B, Shashank
Siddappa, Pranav
Seuss, Dominik
Moharir, Minal
KN, Subramanya
author_facet A, Pranav
B, Shashank
Siddappa, Pranav
Seuss, Dominik
Moharir, Minal
KN, Subramanya
contents Diffusion models are rapidly redefining 3D anomaly detection in point cloud data. As 3D sensing becomes integral to modern manufacturing, reliable anomaly detection is essential for high-throughput quality assurance and process control. Yet practical deployment on resource-constrained, latency-critical systems remains limited. Existing methods are often computationally prohibitive or unreliable in complex, unmasked regions, and diffusion pipelines are inherently bottlenecked by iterative denoising. In this work, we address this bottleneck by reformulating reconstructionbased anomaly detection through consistency learning, enabling direct prediction of anomaly-free geometry in one or two network evaluations. We further introduce a novel hybrid loss formulation that explicitly enforces reconstruction toward clean data. This design substantially reduces inference cost, achieving up to 80x faster runtime than the current state-of-the-art method, without GPU acceleration, while preserving strong detection performance. It outperforms R3D-AD on Anomaly-ShapeNet with 76.20% I-AUROC and remains competitive on Real3DAD with 72.80% I-AUROC, enabling efficient, low-latency anomaly detection on resource-constrained platforms, including drones, smart industrial cameras, and other edge devices.
format Preprint
id arxiv_https___arxiv_org_abs_2605_05372
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Two Steps Are All You Need: Efficient 3D Point Cloud Anomaly Detection with Consistency Models
A, Pranav
B, Shashank
Siddappa, Pranav
Seuss, Dominik
Moharir, Minal
KN, Subramanya
Computer Vision and Pattern Recognition
Artificial Intelligence
Diffusion models are rapidly redefining 3D anomaly detection in point cloud data. As 3D sensing becomes integral to modern manufacturing, reliable anomaly detection is essential for high-throughput quality assurance and process control. Yet practical deployment on resource-constrained, latency-critical systems remains limited. Existing methods are often computationally prohibitive or unreliable in complex, unmasked regions, and diffusion pipelines are inherently bottlenecked by iterative denoising. In this work, we address this bottleneck by reformulating reconstructionbased anomaly detection through consistency learning, enabling direct prediction of anomaly-free geometry in one or two network evaluations. We further introduce a novel hybrid loss formulation that explicitly enforces reconstruction toward clean data. This design substantially reduces inference cost, achieving up to 80x faster runtime than the current state-of-the-art method, without GPU acceleration, while preserving strong detection performance. It outperforms R3D-AD on Anomaly-ShapeNet with 76.20% I-AUROC and remains competitive on Real3DAD with 72.80% I-AUROC, enabling efficient, low-latency anomaly detection on resource-constrained platforms, including drones, smart industrial cameras, and other edge devices.
title Two Steps Are All You Need: Efficient 3D Point Cloud Anomaly Detection with Consistency Models
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2605.05372