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simmediumvision-robotmetric · varies

PiCo: Active Manifold Canonicalization for Robust Robotic Visual Anomaly Detection

Description

Industrial deployment of robotic visual anomaly detection (VAD) is fundamentally constrained by passive perception under diverse 6-DoF pose configurations and unstable operating conditions such as illumination changes and shadows, where intrinsic semantic anomalies and physical disturbances coexist and interact. To overcome these limitations, a paradigm shift from passive feature learning to Active Canonicalization is proposed. PiCo (Pose-in-Condition Canonicalization) is introduced as a unified

Source

http://arxiv.org/abs/2603.23122v1