MIMII DUE: Sound Dataset for Malfunctioning Industrial Machine
Investigation and Inspection with Domain Shifts due to Changes in Operational
and Environmental Conditions
- URL: http://arxiv.org/abs/2105.02702v2
- Date: Fri, 7 May 2021 13:56:38 GMT
- Title: MIMII DUE: Sound Dataset for Malfunctioning Industrial Machine
Investigation and Inspection with Domain Shifts due to Changes in Operational
and Environmental Conditions
- Authors: Ryo Tanabe, Harsh Purohit, Kota Dohi, Takashi Endo, Yuki Nikaido,
Toshiki Nakamura, and Yohei Kawaguchi
- Abstract summary: This paper introduces a new dataset for malfunctioning industrial machine investigation and inspection with domain shifts.
To check the robustness against domain shifts, we need a dataset with domain shifts.
The dataset is a subset of the dataset for DCASE 2021 Challenge Task 2 and freely available at https://zenodo.org/record/4740355.
- Score: 5.441198440485553
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, we introduce a new dataset for malfunctioning industrial
machine investigation and inspection with domain shifts due to changes in
operational and environmental conditions (MIMII DUE). Conventional methods for
anomalous sound detection face challenges in practice because the distribution
of features changes between the training and operational phases (called domain
shift) due to some real-world factors. To check the robustness against domain
shifts, we need a dataset with domain shifts, but such a dataset does not exist
so far. The new dataset consists of normal and abnormal operating sounds of
industrial machines of five different types under two different
operational/environmental conditions (source domain and target domain)
independent of normal/abnormal, with domain shifts occurring between the two
domains. Experimental results show significant performance differences between
the source and target domains, and the dataset contains the domain shifts.
These results indicate that the dataset will be helpful to check the robustness
against domain shifts. The dataset is a subset of the dataset for DCASE 2021
Challenge Task 2 and freely available for download at
https://zenodo.org/record/4740355
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