Anomalous Sound Detection Using a Binary Classification Model and Class
Centroids
- URL: http://arxiv.org/abs/2106.06151v1
- Date: Fri, 11 Jun 2021 03:35:06 GMT
- Title: Anomalous Sound Detection Using a Binary Classification Model and Class
Centroids
- Authors: Ibuki Kuroyanagi, Tomoki Hayashi, Kazuya Takeda, Tomoki Toda
- Abstract summary: We propose a binary classification model that is developed by using not only normal data but also outlier data in the other domains as pseudo-anomalous sound data.
We also investigate the effectiveness of additionally using anomalous sound data for further improving the binary classification model.
- Score: 47.856367556856554
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: An anomalous sound detection system to detect unknown anomalous sounds
usually needs to be built using only normal sound data. Moreover, it is
desirable to improve the system by effectively using a small amount of
anomalous sound data, which will be accumulated through the system's operation.
As one of the methods to meet these requirements, we focus on a binary
classification model that is developed by using not only normal data but also
outlier data in the other domains as pseudo-anomalous sound data, which can be
easily updated by using anomalous data. In this paper, we implement a new loss
function based on metric learning to learn the distance relationship from each
class centroid in feature space for the binary classification model. The
proposed multi-task learning of the binary classification and the metric
learning makes it possible to build the feature space where the within-class
variance is minimized and the between-class variance is maximized while keeping
normal and anomalous classes linearly separable. We also investigate the
effectiveness of additionally using anomalous sound data for further improving
the binary classification model. Our results showed that multi-task learning
using binary classification and metric learning to consider the distance from
each class centroid in the feature space is effective, and performance can be
significantly improved by using even a small amount of anomalous data during
training.
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