论文标题

了解工件对自动息肉检测的影响,并通过学习纳入知识而不忘记

Understanding the effects of artifacts on automated polyp detection and incorporating that knowledge via learning without forgetting

论文作者

Kayser, Maxime, Soberanis-Mukul, Roger D., Zvereva, Anna-Maria, Klare, Peter, Navab, Nassir, Albarqouni, Shadi

论文摘要

当在早期检测到息肉时,结直肠癌的存活率较高,并且可以在其发展为恶性肿瘤之前去除。自动化息肉检测以基于深度学习的方法为主,旨在改善息肉的早期检测。但是,当前的努力在很大程度上取决于培训数据集的规模和质量。这些数据集的质量通常遭受各种影响可见性的图像伪像,因此检测率。在这项工作中,我们进行了系统分析,以更好地了解伪影如何影响自动息肉检测。我们查看六个不同的人工类别及其在图像中的位置如何影响基于视网膜的息肉检测模型的性能。我们发现,根据人工制品类,它们可以受益或损害息肉检测器。例如,气泡通常被错误分类为息肉,而息肉区域内的镜面反射可以提高检测能力。然后,我们研究了不同的策略,例如学习而不忘记框架,以利用人工体知识来改善自动化息肉的检测。我们的结果表明,这样的模型可以减轻工件的某些有害影响,但需要更多的工作才能显着提高息肉检测能力。

Survival rates for colorectal cancer are higher when polyps are detected at an early stage and can be removed before they develop into malignant tumors. Automated polyp detection, which is dominated by deep learning based methods, seeks to improve early detection of polyps. However, current efforts rely heavily on the size and quality of the training datasets. The quality of these datasets often suffers from various image artifacts that affect the visibility and hence, the detection rate. In this work, we conducted a systematic analysis to gain a better understanding of how artifacts affect automated polyp detection. We look at how six different artifact classes, and their location in an image, affect the performance of a RetinaNet based polyp detection model. We found that, depending on the artifact class, they can either benefit or harm the polyp detector. For instance, bubbles are often misclassified as polyps, while specular reflections inside of a polyp region can improve detection capabilities. We then investigated different strategies, such as a learning without forgetting framework, to leverage artifact knowledge to improve automated polyp detection. Our results show that such models can mitigate some of the harmful effects of artifacts, but require more work to significantly improve polyp detection capabilities.

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