Far Away in the Deep Space: Dense Nearest-Neighbor-Based Out-of-Distribution Detection

12 Nov 2022  ยท  Silvio Galesso, Max Argus, Thomas Brox ยท

The key to out-of-distribution detection is density estimation of the in-distribution data or of its feature representations. This is particularly challenging for dense anomaly detection in domains where the in-distribution data has a complex underlying structure. Nearest-Neighbors approaches have been shown to work well in object-centric data domains, such as industrial inspection and image classification. In this paper, we show that nearest-neighbor approaches also yield state-of-the-art results on dense novelty detection in complex driving scenes when working with an appropriate feature representation. In particular, we find that transformer-based architectures produce representations that yield much better similarity metrics for the task. We identify the multi-head structure of these models as one of the reasons, and demonstrate a way to transfer some of the improvements to CNNs. Ultimately, the approach is simple and non-invasive, i.e., it does not affect the primary segmentation performance, refrains from training on examples of anomalies, and achieves state-of-the-art results on RoadAnomaly, StreetHazards, and SegmentMeIfYouCan-Anomaly.

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Results from the Paper


 Ranked #1 on Anomaly Detection on Fishyscapes L&F (using extra training data)

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Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Result Benchmark
Anomaly Detection Fishyscapes L&F cDNP+OE AP 69.8 # 1
FPR95 7.5 # 6
Anomaly Detection Fishyscapes L&F cDNP AP 62.2 # 3
FPR95 8.9 # 8
Anomaly Detection Road Anomaly cDNP AP 85.6 # 2
FPR95 9.8 # 2

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