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Synthesize then Compare: Detecting Failures and Anomalies for Semantic Segmentation
Yingda Xia Yi Zhang Fengze Liu Wei Shen Alan Yuille

Abstract
The ability to detect failures and anomalies are fundamental requirements for building reliable systems for computer vision applications, especially safety-critical applications of semantic segmentation, such as autonomous driving and medical image analysis. In this paper, we systematically study failure and anomaly detection for semantic segmentation and propose a unified framework, consisting of two modules, to address these two related problems. The first module is an image synthesis module, which generates a synthesized image from a segmentation layout map, and the second is a comparison module, which computes the difference between the synthesized image and the input image. We validate our framework on three challenging datasets and improve the state-of-the-arts by large margins, \emph{i.e.}, 6% AUPR-Error on Cityscapes, 7% Pearson correlation on pancreatic tumor segmentation in MSD and 20% AUPR on StreetHazards anomaly segmentation.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| anomaly-detection-on-road-anomaly | SynthCP | AP: 24.86 FPR95: 64.69 |
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