RAD: A Comprehensive Dataset for Benchmarking the Robustness of Image Anomaly Detection
Robustness against noisy imaging is crucial for practical image anomaly detection systems. This study introduces a Robust Anomaly Detection (RAD) dataset with free views, uneven illuminations, and blurry collections to systematically evaluate the robustness of current anomaly detection methods. Spec...
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Zusammenfassung: | Robustness against noisy imaging is crucial for practical image anomaly
detection systems. This study introduces a Robust Anomaly Detection (RAD)
dataset with free views, uneven illuminations, and blurry collections to
systematically evaluate the robustness of current anomaly detection methods.
Specifically, RAD aims to identify foreign objects on working platforms as
anomalies. The collection process incorporates various sources of imaging
noise, such as viewpoint changes, uneven illuminations, and blurry collections,
to replicate real-world inspection scenarios. Subsequently, we assess and
analyze 11 state-of-the-art unsupervised and zero-shot methods on RAD. Our
findings indicate that: 1) Variations in viewpoint, illumination, and blurring
affect anomaly detection methods to varying degrees; 2) Methods relying on
memory banks and assisted by synthetic anomalies demonstrate stronger
robustness; 3) Effectively leveraging the general knowledge of foundational
models is a promising avenue for enhancing the robustness of anomaly detection
methods. The dataset is available at https://github.com/hustCYQ/RAD-dataset. |
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DOI: | 10.48550/arxiv.2406.07176 |