首页> 外文会议>International conference on medical image computing and computer assisted intervention;International workshop on machine learning in medical imaging >Do We Need Large Annotated Training Data for Detection Applications in Biomedical Imaging? A Case Study in Renal Glomeruli Detection
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Do We Need Large Annotated Training Data for Detection Applications in Biomedical Imaging? A Case Study in Renal Glomeruli Detection

机译:我们是否需要大批注解的训练数据以用于生物医学成像中的检测应用?肾小球检测的案例研究

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Approaches for detecting regions of interest in biomedical image data mostly assume that a large amount of annotated training data is available. Certainly, for unchanging problem definitions, the acquisition of large annotated data is time consuming, yet feasible. However, distinct practical problems with large training corpi arise if variability due to different imaging conditions or inter-personal variations lead to significant changes in the image representation. To circumvent these issues, we investigate a classifier learning scenario which requires a small amount of positive annotation data only. Contrarily to previous approaches which focus on methodologies to explicitly or implicitly deal with specific classification scenarios (such as one-class classification), we show that existing supervised classification models can handle a changed setting effectively without any specific modifications.
机译:用于检测生物医学图像数据中感兴趣区域的方法大多假定大量带注释的训练数据可用。当然,对于不变的问题定义,获取大批注数据很耗时,但却是可行的。但是,如果由于不同的成像条件或人际差异导致的可变性导致图像表示形式发生显着变化,则会出现大训练柯比的实际问题。为了避免这些问题,我们研究了仅需要少量正面注解数据的分类器学习方案。与先前的方法侧重于显式或隐式处理特定分类方案(例如,一类分类)的方法相反,我们证明了现有的监督分类模型可以有效地处理更改的设置,而无需任何特定的修改。

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