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Detecting the Unexpected via Image Resynthesis

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Classical semantic segmentation methods, including the recent deep learning ones, assume that all classes observed at test time have been seen during training. In this paper, we tackle the more realistic scenario where unexpected objects of unknown classes can appear at test time. The main trends in this area either leverage the notion of prediction uncertainty to flag the regions with low confidence as unknown, or rely on autoencoders and highlight poorly-decoded regions. Having observed that, in both cases, the detected regions typically do not correspond to unexpected objects, in this paper, we introduce a drastically different strategy: It relies on the intuition that the network will produce spurious labels in regions depicting unexpected objects. Therefore, resynthesizing the image from the resulting semantic map will yield significant appearance differences with respect to the input image. In other words, we translate the problem of detecting unknown classes to one of identifying poorly-resynthesized image regions. We show that this outperforms both uncertainty- and autoencoder-based methods.

Krzysztof Lis, Krishna Nakka, Pascal Fua, Mathieu Salzmann• 2019

Related benchmarks

TaskDatasetResultRank
Semantic segmentationCityscapes (test)
mIoU79.9
1145
Semantic segmentationCityscapes (val)
mIoU81.4
572
Semantic segmentationCityscapes (val)
mIoU83.5
287
Anomaly SegmentationFishyscapes Lost & Found (test)
FPR@9548.05
61
Dense Anomaly DetectionSMIYC AnomalyTrack
AP57.1
30
Anomaly SegmentationFishyscapes Static (test)
FPR9527.13
28
Anomaly DetectionFishyscapes Static
AP29.6
27
Anomaly DetectionFishyscapes Lost & Found
AP5.7
27
Out-of-Distribution DetectionSMIYC Obstacle (test)
AP37.71
22
Dense Anomaly DetectionSMIYC ObstacleTrack
AP37.7
21
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