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Discriminative anatomy detection: Classification vs regression

机译:区分性解剖检测:分类与回归

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摘要

Detecting a single anatomy or a plurality of anatomical objects, such as landmarks or organs, in a medical image is important yet challenging. An anatomy detection method has to address offline model learning complexity related to modeling the appearance of a single object or a plurality of objects and online computational complexity related to search or inference strategy. In the paper, we present a survey of discriminative learning methods for appearance modeling as well as their corresponding search strategies and discuss how they leverage the anatomical context embedded in the medical image for more effective and more efficient detection.
机译:在医学图像中检测单个解剖结构或多个解剖结构对象(例如地标或器官)是重要但具有挑战性的。解剖学检测方法必须解决与建模单个对象或多个对象的外观有关的离线模型学习复杂性以及与搜索或推理策略有关的在线计算复杂性。在本文中,我们对外观建模的判别学习方法及其相应的搜索策略进行了概述,并讨论了它们如何利用嵌入医学图像中的解剖上下文来更有效,更有效地进行检测。

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