Published May 15, 2025 | Version v1
Dataset Open

DCASE 2025 Challenge Task 2 Additional Training Dataset

Description

Description

This dataset is the "additional training dataset" for the DCASE 2025 Challenge Task 2.

The data consists of the normal/anomalous operating sounds of seven types of real/toy machines. Each recording is a single-channel 10-sec or 12-sec audio that includes both a machine's operating sound and environmental noise. The following seven types of real/toy machines are used in this task:

  • AutoTrash
  • HomeCamera
  • ToyPet
  • ToyRCCar
  • BandSealer
  • Polisher
  • ScrewFeeder
  • CoffeeGrinder

Overview of the task

Anomalous sound detection (ASD) is the task of identifying whether the sound emitted from a target machine is normal or anomalous. Automatic detection of mechanical failure is an essential technology in the fourth industrial revolution, which involves artificial-intelligence-based factory automation. Prompt detection of machine anomalies by observing sounds is useful for monitoring the condition of machines. 

This task is the follow-up from DCASE 2020 Task 2 to DCASE 2024 Task 2. The task this year is to develop an ASD system that meets the following five requirements.

1. Train a model using only normal sound (unsupervised learning scenario)
   Because anomalies rarely occur and are highly diverse in real-world factories, it can be difficult to collect exhaustive patterns of anomalous sounds. Therefore, the system must detect unknown types of anomalous sounds that are not provided in the training data, which is called UASD (unsupervised ASD). This is the same requirement as in the previous tasks.
2. Detect anomalies regardless of domain shifts (domain generalization task)
   In real-world cases, the operational states of a machine or the environmental noise can change to cause domain shifts. Domain-generalization techniques can be useful for handling domain shifts that occur frequently or are hard-to-notice. In this task, the system is required to use domain-generalization techniques for handling these domain shifts. This requirement is the same since DCASE 2022 Task 2.
3. Train a model for a completely new machine type
   For a completely new machine type, hyperparameters of the trained model cannot be tuned. Therefore, the system should have the ability to train models without additional hyperparameter tuning. This requirement is the same since DCASE 2023 Task 2.
4. Train a model both with or without attribute information
   While additional attribute information can help enhance the detection performance, we cannot always obtain such information. Therefore, the system must work well both when attribute information is available and when it is not.
5. Train a model with additional clean machine data or noise-only data (optional)
   Although the primary training data consists of machine sounds recorded under noisy conditions, in some situations it may be possible to collect clean machine data when the factory is idle or gather noise recordings when the machine itself is not running. Participants are free to incorporate these additional data sources to enhance the accuracy of their models.

The last optional requirement is newly introduced in DCASE 2025 Task2.

 

Definition

We first define key terms in this task: "machine type," "section," "source domain," "target domain," and "attributes.".

  • "Machine type" indicates the type of machine, which in the additional training dataset is one of eight: auto trash, home camera, Toy pet, Toy RC car, band sealer, polisher, screw feeder.
  • A section is defined as a subset of the dataset for calculating performance metrics.
  • The source domain is the domain under which most of the training data and some of the test data were recorded, and the target domain is a different set of domains under which some of the training data and some of the test data were recorded. There are differences between the source and target domains in terms of operating speed, machine load, viscosity, heating temperature, type of environmental noise, signal-to-noise ratio, etc.
  • Attributes are parameters that define states of machines or types of noise. For several machine types, the attributes are hidden.

 

Dataset

This dataset consists of eight machine types. For each machine type, one section is provided, and the section is a complete set of training data. A set of test data corresponding to this training data will be provided in another seperate zenodo page as an "evaluation dataset" for the DCASE 2025 Challenge task 2. For each section, this dataset provides (i) 990 clips of normal sounds in the source domain for training and (ii) ten clips of normal sounds in the target domain for training, (iii) 100 clips of supplementary sound data containing either clean normal machine sounds in the source domain or noise-only sounds. The source/target domain of each sample is provided. Additionally, the attributes of each sample in the training and test data are provided in the file names and attribute csv files.

File names and attribute csv files

File names and attribute csv files provide reference labels for each clip. The given reference labels for each training/test clip include machine type, section index, normal/anomaly information, and attributes regarding the condition other than normal/anomaly. The machine type is given by the directory name. The section index is given by their respective file names. For the datasets other than the evaluation dataset, the normal/anomaly information and the attributes are given by their respective file names. Note that for machine types that has its attribute information hidden, the attribute information in each file names are only labeled as "noAttributes". Attribute csv files are for easy access to attributes that cause domain shifts. In these files, the file names, name of parameters that cause domain shifts (domain shift parameter, dp), and the value or type of these parameters (domain shift value, dv) are listed. Each row takes the following format:

    [filename (string)], [d1p (string)], [d1v (int | float | string)], [d2p], [d2v]...

For machine types that have their attribute information hidden, all columns except the filename column are left blank for each row.

Recording procedure

Normal/anomalous operating sounds of machines and its related equipment are recorded. Anomalous sounds were collected by deliberately damaging target machines. For simplifying the task, we use only the first channel of multi-channel recordings; all recordings are regarded as single-channel recordings of a fixed microphone. We mixed a target machine sound with environmental noise, and only noisy recordings are provided as training/test data. The environmental noise samples were recorded in several real factory environments. We will publish papers on the dataset to explain the details of the recording procedure by the submission deadline.

 

Directory structure

- /eval_data  

    - /raw
        - /AutoTrash
            - /train (only normal clips)  
                - /section_00_source_train_normal_0001_<attribute>.wav  
                - ...  
                - /section_00_source_train_normal_0990_<attribute>.wav  
                - /section_00_target_train_normal_0001_<attribute>.wav  
                - ...  
                - /section_00_target_train_normal_0010_<attribute>.wav  
            - /supplemental
                - /section_00_<"machine" or "noise">_source_0000_<attribute>.wav
                - ...
                - /section_00_<"machine" or "noise">_source_0100_<attribute>.wav
            - attributes_00.csv (attribute csv for section 00)
    - /HomeCamera
   - /ToyPet
   - /ToyRCCar
   - /BandSealer
   - /Polisher
   - /ScrewFeeder
   - /CoffeeGrinder

Baseline system

The baseline system is available on the Github repository https://github.com/nttcslab/dcase2023_task2_baseline_ae. The baseline systems provide a simple entry-level approach that gives a reasonable performance in the dataset of Task 2. They are good starting points, especially for entry-level researchers who want to get familiar with the anomalous-sound-detection task.

 

Condition of use

This dataset was created jointly by Hitachi, Ltd. and NTT Corporation and is available under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International (CC BY-NC-SA 4.0) license.

 

Citation

<TBD>

 

Contact

If there is any problem, please contact us:

Files

eval_data_AutoTrash_train.zip

Files (2.0 GB)

Name Size Download all
md5:0d89113bee9837402c609cb466c4a953
181.0 MB Preview Download
md5:0e43610e140e34e0187b25f09d1f447b
441.2 MB Preview Download
md5:9f39058361fde38fd5e24a52262d5977
162.5 MB Preview Download
md5:f81a89d772b1454af476059cb9800788
169.8 MB Preview Download
md5:09e62aea7f2a82b417e7c388c1060e92
272.4 MB Preview Download
md5:4a30f5aa52f019cac1d8653931ac4f44
249.8 MB Preview Download
md5:0684d7185b4feea26b8479324f9c6573
298.2 MB Preview Download
md5:74dc1d920983255d53b5214b0429b4d8
203.7 MB Preview Download