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Papers/The Fishyscapes Benchmark: Measuring Blind Spots in Semant...

The Fishyscapes Benchmark: Measuring Blind Spots in Semantic Segmentation

Hermann Blum, Paul-Edouard Sarlin, Juan Nieto, Roland Siegwart, Cesar Cadena

2019-04-05SegmentationAnomaly DetectionAutonomous DrivingSemantic Segmentation
PaperPDFCode(official)

Abstract

Deep learning has enabled impressive progress in the accuracy of semantic segmentation. Yet, the ability to estimate uncertainty and detect failure is key for safety-critical applications like autonomous driving. Existing uncertainty estimates have mostly been evaluated on simple tasks, and it is unclear whether these methods generalize to more complex scenarios. We present Fishyscapes, the first public benchmark for uncertainty estimation in a real-world task of semantic segmentation for urban driving. It evaluates pixel-wise uncertainty estimates towards the detection of anomalous objects in front of the vehicle. We~adapt state-of-the-art methods to recent semantic segmentation models and compare approaches based on softmax confidence, Bayesian learning, and embedding density. Our results show that anomaly detection is far from solved even for ordinary situations, while our benchmark allows measuring advancements beyond the state-of-the-art.

Results

TaskDatasetMetricValueModel
Anomaly DetectionFishyscapes L&FAP34.28Dirichlet DeepLab
Anomaly DetectionFishyscapes L&FFPR9547.43Dirichlet DeepLab
Anomaly DetectionFishyscapes L&FAP10.29Void Classifier
Anomaly DetectionFishyscapes L&FFPR9522.11Void Classifier
Anomaly DetectionFishyscapes L&FAP9.8Bayesian DeepLab
Anomaly DetectionFishyscapes L&FFPR9538.5Bayesian DeepLab
Anomaly DetectionFishyscapes L&FAP4.7Learned Embedding Density
Anomaly DetectionFishyscapes L&FFPR9524.4Learned Embedding Density
Anomaly DetectionFishyscapes L&FAP2.9Softmax Entropy
Anomaly DetectionFishyscapes L&FFPR9544.8Softmax Entropy

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