Noise Datasets for Evaluating Deep Generative Models

Synthetic training and test datasets for experiments on deep generative modeling of noise time series. Consists of data for the following noise types: 1) band-limited thermal noise, i.e., bandpass filtered white Gaussian noise, 2) power law noise, including fractional Gaussian noise (FGN), fractional Brownian motion (FBM), and fractionally differenced white noise (FDWN), 3) generalized shot noise, 4) impulsive noise, including Bernoulli-Gaussian (BG) and symmetric alpha stable (SAS) distributions. Documentation of simulation methods and experiments with Generative Adversarial Networks (GANs) are given in the paper "Data-Driven Modeling of Noise Time Series with Convolutional Generative Adversarial Networks" and the associated software; see references below.

Data and Resources

Field Value
accessLevel public
accrualPeriodicity irregular
bureauCode {006:55}
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catalog_describedBy https://project-open-data.cio.gov/v1.1/schema/catalog.json
identifier ark:/88434/mds2-3034
issued 2023-06-22
landingPage https://data.nist.gov/od/id/mds2-3034
language {en}
license https://www.nist.gov/open/license
modified 2023-06-07 00:00:00
programCode {006:045}
publisher National Institute of Standards and Technology
references {https://doi.org/10.1088/2632-2153/acee44,https://github.com/usnistgov/NoiseGAN}
resource-type Dataset
source_datajson_identifier true
source_hash 417a82837809e293bf31e430d273177bc50417d3042e1562e498cd1034fe2624
source_schema_version 1.1
theme {"Advanced Communications:Wireless (RF)","Mathematics and Statistics:Image and signal processing","Mathematics and Statistics:Modeling and simulation research"}
Groups
  • AmeriGEOSS
  • National Provider
  • North America
Tags
  • AmeriGEO
  • AmeriGEOSS
  • CKAN
  • GEO
  • GEOSS
  • National
  • North America
  • United States
  • band-limited-noise
  • colored-noise
  • fractional-brownian-motion
  • fractional-gaussian-noise
  • generative-adversarial-network
  • impulsive-noise
  • machine-learning
  • power-law-noise
  • shot-noise
  • time-series
isopen False
license_id other-license-specified
license_title other-license-specified
maintainer Adam Wunderlich
maintainer_email adam.wunderlich@nist.gov
metadata_created 2025-09-23T14:59:20.092478
metadata_modified 2025-09-23T14:59:20.092485
notes Synthetic training and test datasets for experiments on deep generative modeling of noise time series. Consists of data for the following noise types: 1) band-limited thermal noise, i.e., bandpass filtered white Gaussian noise, 2) power law noise, including fractional Gaussian noise (FGN), fractional Brownian motion (FBM), and fractionally differenced white noise (FDWN), 3) generalized shot noise, 4) impulsive noise, including Bernoulli-Gaussian (BG) and symmetric alpha stable (SAS) distributions. Documentation of simulation methods and experiments with Generative Adversarial Networks (GANs) are given in the paper "Data-Driven Modeling of Noise Time Series with Convolutional Generative Adversarial Networks" and the associated software; see references below.
num_resources 2
num_tags 18
title Noise Datasets for Evaluating Deep Generative Models