Open-set segmentation is often conceived by complementing closed-set classification with anomaly detection. Existing dense anomaly detectors operate either through generative modelling of regular training data or by discriminating with respect to negative training data. These two approaches optimize different objectives and therefore exhibit different failure modes. Consequently, we propose the first dense hybrid anomaly score that fuses generative and discriminative cues. The proposed score can be efficiently implemented by upgrading any semantic segmentation model with translation-equivariant estimates of data likelihood and dataset posterior. Our design is a remarkably good fit for efficient inference on large images due to negligible computational overhead over the closed-set baseline. The resulting dense hybrid open-set models require negative training images that can be sampled either from an auxiliary negative dataset or from a jointly trained generative model. We evaluate our contributions on benchmarks for dense anomaly detection and open-set segmentation of traffic scenes. The experiments reveal strong open-set performance in spite of negligible computational overhead.
翻译:现有的密集异常探测器要么通过定期培训数据的基因建模,要么通过对负面培训数据加以区分。这两种方法优化了不同的目标,因此出现了不同的失败模式。因此,我们提出第一个密集混合异常评分,将基因化和歧视性的提示结合起来。通过对数据概率和数据元件外表进行翻译和等同估计,可以有效地实施拟议的评分。我们的设计非常适合对大型图像进行有效的推论,因为封闭基线上的可忽略的计算间接费用。由此产生的密集混合开立模型要求从辅助负数据集或联合训练的基因化模型中取样负面培训图像。我们评价我们对密度异常探测基准和对交通场景的开立分解基准的贡献。实验显示,尽管有可忽略的计算间接费用,但仍有很强的开放性表现。