Why Do Angular Margin Losses Work Well for Semi-Supervised Anomalous Sound Detection?
Kevin Wilkinghoff,
Frank Kurth
Abstract:State-of-the-art anomalous sound detection systems often utilize angular margin losses to learn suitable representations of acoustic data using an auxiliary task, which usually is a supervised or self-supervised classification task. The underlying idea is that, in order to solve this auxiliary task, specific information about normal data needs to be captured in the learned representations and that this information is also sufficient to differentiate between normal and anomalous samples. Especially in noisy con… Show more
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