In this work, we propose CBiGAN -- a novel method for anomaly detection in images, where a consistency constraint is introduced as a regularization term in both the encoder and decoder of a BiGAN. Our model exhibits fairly good modeling power and reconstruction consistency capability. We evaluate the proposed method on MVTec AD -- a real-world benchmark for unsupervised anomaly detection on high-resolution images -- and compare against standard baselines and state-of-the-art approaches. Experiments show that the proposed method improves the performance of BiGAN formulations by a large margin and performs comparably to expensive state-of-the-art iterative methods while reducing the computational cost. We also observe that our model is particularly effective in texture-type anomaly detection, as it sets a new state of the art in this category. Our code is available at https://github.com/fabiocarrara/cbigan-ad/.
翻译:在这项工作中,我们提议CBIGAN -- -- 在图像中检测异常现象的一种新颖方法,在BIGAN的编码器和解码器中,采用一致性限制作为正规化术语。我们的模型展示出相当好的建模能力和重建一致性能力。我们评价了MVTec AD的拟议方法 -- -- 高分辨率图像不受监督地检测异常现象的真实世界基准 -- -- 并与标准基线和最先进的方法进行比较。实验表明,拟议的方法大大改进了BIGAN配方的性能,在降低计算成本的同时,可以与昂贵的尖端迭接法进行可比。我们还观察到,我们的模型在质类异常现象探测方面特别有效,因为它为这一类的艺术创造了新的状态。我们的代码可在https://github.com/fiocarrara/cbigan-ad/上查阅。