Towards Open-World Object-based Anomaly Detection via Self-Supervised Outlier Synthesis
Object detection is a pivotal task in computer vision that has received significant attention in previous years. Nonetheless, the capability of a detector to localise objects out of the training distribution remains unexplored. Whilst recent approaches in object-level out-of-distribution (OoD) detec...
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Zusammenfassung: | Object detection is a pivotal task in computer vision that has received
significant attention in previous years. Nonetheless, the capability of a
detector to localise objects out of the training distribution remains
unexplored. Whilst recent approaches in object-level out-of-distribution (OoD)
detection heavily rely on class labels, such approaches contradict truly
open-world scenarios where the class distribution is often unknown. In this
context, anomaly detection focuses on detecting unseen instances rather than
classifying detections as OoD. This work aims to bridge this gap by leveraging
an open-world object detector and an OoD detector via virtual outlier
synthesis. This is achieved by using the detector backbone features to first
learn object pseudo-classes via self-supervision. These pseudo-classes serve as
the basis for class-conditional virtual outlier sampling of anomalous features
that are classified by an OoD head. Our approach empowers our overall object
detector architecture to learn anomaly-aware feature representations without
relying on class labels, hence enabling truly open-world object anomaly
detection. Empirical validation of our approach demonstrates its effectiveness
across diverse datasets encompassing various imaging modalities (visible,
infrared, and X-ray). Moreover, our method establishes state-of-the-art
performance on object-level anomaly detection, achieving an average recall
score improvement of over 5.4% for natural images and 23.5% for a security
X-ray dataset compared to the current approaches. In addition, our method
detects anomalies in datasets where current approaches fail. Code available at
https://github.com/KostadinovShalon/oln-ssos. |
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DOI: | 10.48550/arxiv.2407.15763 |