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CITATION.cff
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# This CITATION.cff file was generated with cffinit.
# Visit https://bit.ly/cffinit to generate yours today!
cff-version: 1.2.0
title: "Anomalib: A Deep Learning Library for Anomaly Detection"
message: "If you use this library and love it, cite the software and the paper \U0001F917"
authors:
- given-names: Samet
family-names: Akcay
email: samet.akcay@intel.com
affiliation: Intel
- given-names: Dick
family-names: Ameln
email: dick.ameln@intel.com
affiliation: Intel
- given-names: Ashwin
family-names: Vaidya
email: ashwin.vaidya@intel.com
affiliation: Intel
- given-names: Barath
family-names: Lakshmanan
email: barath.lakshmanan@intel.com
affiliation: Intel
- given-names: Nilesh
family-names: Ahuja
email: nilesh.ahuja@intel.com
affiliation: Intel
- given-names: Utku
family-names: Genc
email: utku.genc@intel.com
affiliation: Intel
version: 0.2.6
doi: https://doi.org/10.48550/arXiv.2202.08341
date-released: 2022-02-18
references:
- type: article
authors:
- given-names: Samet
family-names: Akcay
email: samet.akcay@intel.com
affiliation: Intel
- given-names: Dick
family-names: Ameln
email: dick.ameln@intel.com
affiliation: Intel
- given-names: Ashwin
family-names: Vaidya
email: ashwin.vaidya@intel.com
affiliation: Intel
- given-names: Barath
family-names: Lakshmanan
email: barath.lakshmanan@intel.com
affiliation: Intel
- given-names: Nilesh
family-names: Ahuja
email: nilesh.ahuja@intel.com
affiliation: Intel
- given-names: Utku
family-names: Genc
email: utku.genc@intel.com
affiliation: Intel
title: "Anomalib: A Deep Learning Library for Anomaly Detection"
year: 2022
journal: ArXiv
doi: https://doi.org/10.48550/arXiv.2202.08341
url: https://arxiv.org/abs/2202.08341
abstract: >-
This paper introduces anomalib, a novel library for
unsupervised anomaly detection and localization.
With reproducibility and modularity in mind, this
open-source library provides algorithms from the
literature and a set of tools to design custom
anomaly detection algorithms via a plug-and-play
approach. Anomalib comprises state-of-the-art
anomaly detection algorithms that achieve top
performance on the benchmarks and that can be used
off-the-shelf. In addition, the library provides
components to design custom algorithms that could
be tailored towards specific needs. Additional
tools, including experiment trackers, visualizers,
and hyper-parameter optimizers, make it simple to
design and implement anomaly detection models. The
library also supports OpenVINO model optimization
and quantization for real-time deployment. Overall,
anomalib is an extensive library for the design,
implementation, and deployment of unsupervised
anomaly detection models from data to the edge.
keywords:
- Unsupervised Anomaly detection
- Unsupervised Anomaly localization
license: Apache-2.0