Unsupervised Anomaly Detection has become a popular method to detect pathologies in medical images as it does not require supervision or labels for training. Most commonly, the anomaly detection model generates a "normal" version of an input image, and the pixel-wise $l^p$-difference of the two is used to localize anomalies. However, large residuals often occur due to imperfect reconstruction of the complex anatomical structures present in most medical images. This method also fails to detect anomalies that are not characterized by large intensity differences to the surrounding tissue. We propose to tackle this problem using a feature-mapping function that transforms the input intensity images into a space with multiple channels where anomalies can be detected along different discriminative feature maps extracted from the original image. We then train an Autoencoder model in this space using structural similarity loss that does not only consider differences in intensity but also in contrast and structure. Our method significantly increases performance on two medical data sets for brain MRI. Code and experiments are available at https://github.com/FeliMe/feature-autoencoder
翻译:通常,异常检测模型产生输入图像的“正常”版本,而两者的像素-WY $l ⁇ p$-difference被用来将异常现象本地化。然而,由于大多数医学图像中存在的复杂的解剖结构的重建不完善,大量残留物往往出现。这种方法也未能检测出与周围组织没有严重强度差异特征的异常现象。我们提议使用地貌图功能来解决这个问题,将输入强度图像转换成一个有多种频道的空间,在从原始图像中提取的不同歧视性特征地图中可以检测出异常现象。我们然后在这个空间中培训一个自动编码模型,使用的结构相似性损失不仅考虑到强度差异,而且还考虑到对比和结构。我们的方法大大提高了大脑MRI两个医学数据集的性能。我们的方法和实验可在 https://github.com/FeliME/featriat-autoencoder 上查阅。