Anomalib: A Deep Learning Library for Anomaly Detection
It addresses the need for a comprehensive and accessible library for anomaly detection in various domains, though it is incremental as it builds on existing algorithms.
The paper introduces anomalib, a deep learning library for unsupervised anomaly detection and localization, providing state-of-the-art algorithms and tools for reproducibility, modular design, and real-time deployment.
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.