Anomalous Sound Detection
Anomalous sound detection (ASD) focuses on identifying unusual sounds in audio data, typically to detect machine malfunctions or other anomalies in industrial settings. Current research emphasizes unsupervised and semi-supervised learning approaches, leveraging autoencoders, diffusion models, and transformers, often incorporating techniques like contrastive learning and self-supervised training to address data scarcity and domain shifts. These advancements are crucial for improving the reliability and efficiency of industrial monitoring systems, enabling early fault detection and preventative maintenance, and reducing downtime.
Papers
March 21, 2024
March 1, 2024
February 10, 2024
December 21, 2023
December 15, 2023
December 14, 2023
November 15, 2023
October 22, 2023
October 13, 2023
October 10, 2023
September 27, 2023
September 14, 2023
Outlier-aware Inlier Modeling and Multi-scale Scoring for Anomalous Sound Detection via Multitask Learning
Yucong Zhang, Hongbin Suo, Yulong Wan, Ming Li
Hierarchical Metadata Information Constrained Self-Supervised Learning for Anomalous Sound Detection Under Domain Shift
Haiyan Lan, Qiaoxi Zhu, Jian Guan, Yuming Wei, Wenwu Wang
August 27, 2023
May 25, 2023
May 20, 2023
May 13, 2023
May 5, 2023
April 7, 2023
March 31, 2023