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Overlaid Arrow Detection for Labeling Regions of Interest in Biomedical Images

机译:生物医学图像中标记感兴趣区域的重叠箭头检测

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摘要

A new template-free geometric signature-based technique detects arrow annotations on biomedical images. Arrow detection is a key first step to region-of-interest (ROI) labeling and image content analysis. Images are first binarized using a fuzzy binarization tool, and candidates are selected based on the connected component principle. For each candidate, the proposed method checks geometric properties of novel arrow signatures from key points associated with its boundary. These signatures are then compared with the theoretical (or idealized) arrow signatures, and a high similarity score indicates the presence of an arrow. The data was evaluated against the imageCLEFmed benchmark collection and achieved precision and recall of 93.14 percent and 86.12 percent, respectively, which outperforms previously reported arrow-detection methods.
机译:一种新的无模板的基于几何签名的技术可以检测生物医学图像上的箭头注释。箭头检测是关注区域(ROI)标记和图像内容分析的关键第一步。首先使用模糊二值化工具对图像进行二值化,然后根据连接的分量原理选择候选对象。对于每个候选者,所提出的方法从与其边界关联的关键点检查新颖箭头签名的几何特性。然后将这些签名与理论(或理想化)箭头签名进行比较,并且较高的相似性得分表示箭头的存在。根据imageCLEFmed基准测试对数据进行了评估,其准确度和召回率分别为93.14%和86.12%,这比以前报道的箭头检测方法要好。

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