Litcius/Paper detail

Revisiting Reverse Distillation for Anomaly Detection

Tran Tien, Anh Tuan Nguyen, Nguyen H. Tran, Ta Duc Huy, Soan T. M. Duong, Chanh D. Tr. Nguyen, Steven Q. H. Truong

2023218 citationsDOI

Abstract

Anomaly detection is an important application in large-scale industrial manufacturing. Recent methods for this task have demonstrated excellent accuracy but come with a latency trade-off. Memory based approaches with dominant performances like PatchCore or Coupled-hypersphere-based Feature Adaptation (CFA) require an external memory bank, which significantly lengthens the execution time. Another approach that employs Reversed Distillation (RD) can perform well while maintaining low latency. In this paper, we revisit this idea to improve its performance, establishing a new state-of-the-art benchmark on the challenging MVTec dataset for both anomaly detection and localization. The proposed method, called RD++, runs six times faster than PatchCore, and two times faster than CFA but introduces a negligible latency compared to RD. We also experiment on the BTAD and Retinal OCT datasets to demonstrate our method's generalizability and conduct important ablation experiments to provide insights into its configurations. Source code will be available at https://github.com/tientrandinh/Revisiting-Reverse-Distillation.

Topics & Concepts

Computer scienceAnomaly detectionLatency (audio)Generalizability theoryBenchmark (surveying)DistillationHypersphereFault detection and isolationLow latency (capital markets)Source codeArtificial intelligenceCode (set theory)Anomaly (physics)Machine learningComputer engineeringPattern recognition (psychology)Operating systemActuatorTelecommunicationsGeographyMathematicsGeodesyChemistryPhysicsProgramming languageStatisticsComputer networkOrganic chemistryCondensed matter physicsSet (abstract data type)Anomaly Detection Techniques and ApplicationsRetinal Imaging and AnalysisCOVID-19 diagnosis using AI