论文标题
从结肠镜检查中的息肉框架几乎没有射击异常检测
Few-Shot Anomaly Detection for Polyp Frames from Colonoscopy
论文作者
论文摘要
异常检测方法通常是针对正常图像分布的学习(即显示健康病例的嵌入者),在测试期间,样品距离学习分布相对较远被归类为异常(即显示出疾病病例的异常值)。这些方法往往对相对接近嵌入式的离群值敏感(例如,具有小息肉的结肠镜检查图像)。在本文中,我们通过向Inliers学习来解决对异常值的不当敏感性。我们提出了一种基于经过训练的编码器,以最大化特征嵌入和正常图像之间的相互信息,然后进行几次摄影得分推理网络,并使用大量的嵌入式和大量较小的异常值训练。我们评估了我们提出的方法,即从结肠镜检查序列中检测含有息肉的框架的临床问题,其中训练集具有13350个正常图像(即没有息肉)和少于100个异常图像(即息肉)。我们在此数据集上提出的模型的结果揭示了最新的检测结果,而基于不同数量的异常样本的性能在大约40个异常训练图像之后相对稳定。
Anomaly detection methods generally target the learning of a normal image distribution (i.e., inliers showing healthy cases) and during testing, samples relatively far from the learned distribution are classified as anomalies (i.e., outliers showing disease cases). These approaches tend to be sensitive to outliers that lie relatively close to inliers (e.g., a colonoscopy image with a small polyp). In this paper, we address the inappropriate sensitivity to outliers by also learning from inliers. We propose a new few-shot anomaly detection method based on an encoder trained to maximise the mutual information between feature embeddings and normal images, followed by a few-shot score inference network, trained with a large set of inliers and a substantially smaller set of outliers. We evaluate our proposed method on the clinical problem of detecting frames containing polyps from colonoscopy video sequences, where the training set has 13350 normal images (i.e., without polyps) and less than 100 abnormal images (i.e., with polyps). The results of our proposed model on this data set reveal a state-of-the-art detection result, while the performance based on different number of anomaly samples is relatively stable after approximately 40 abnormal training images.