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CS-GANomaly: A Supervised Anomaly Detection Approach with Ancillary Classifier GANs for Chromosome Images

机译:CS-ganomaly:具有辅助分类器GAN的监督异常检测方法,用于染色体图像

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Although anomaly detection is an urgent and significant task in various applications, there are few good enough methods to meet the requirements. The challenge of anomaly detection lies in how to distinguish the diverse or even unknown anomalies. Therefore, previous studies have focused on imagelevel anomaly detection tasks, and mostly based on unsupervised methods. These methods only consider the characteristics of normal samples and are confined to the “normal” category, ignoring information between samples. In particular, the limitations of unsupervised methods are more obvious for pixellevel abnormalities such as the chromosomal structural anomalies investigated in this paper, because the similarity between normal and abnormal samples is relatively high. In this work, we propose a supervised anomaly detection approach Classification - Enhanced GANomaly (abbreviated as CS-GANomaly). By fusing the category information with the sample, the spatial distribution of the sample has regional characteristics and then combining the anomaly detection strategies to carry out multidimension anomaly detection. The CS-GANomaly adopts the GAN framework for adversarial training and adapts the GAN output to anomaly detection. The experimental results prove the superiority of our approach, whether it is a pixel-level anomaly in abnormal chromosome dataset or image-level anomaly in the benchmark dataset.
机译:虽然异常检测是各种应用中的紧急和重要任务,但很少有足够的方法来满足要求。异常检测的挑战在于如何区分多样化或甚至未知的异常。因此,之前的研究专注于ImageLevel异常检测任务,主要基于无监督的方法。这些方法仅考虑正常样本的特征,并限制在“正常”类别中,忽略样本之间的信息。特别是,对于如本文研究的染色体结构异常(如本文研究的染色体结构异常)的PIXELLEVEL异常更为明显,因为正常和异常样本之间的相似性相对较高。在这项工作中,我们提出了监督异常检测方法分类 - 增强的Ganomaly(缩写为CS-Ganomaly)。通过用样品融合类别信息,样品的空间分布具有区域特征,然后将异常检测策略结合起来进行多电极大米异常检测。 CS-Ganomaly采用GaN框架进行对抗性培训,并使GaN输出调整为异常检测。实验结果证明了我们方法的优越性,无论是在基准数据集中的异常染色体数据集或图像级异常中的像素水平异常。

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