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Robust Colon Residue Detection Using Vector Quantization Based Classification for Virtual Colonoscopy

机译:基于Virtual Colonoscopy的矢量量化分类鲁棒结肠残留检测

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We present an automatic and robust tagged-residue detection technique using vector quantization based classification. This technique enables electronic cleansing even on poorly tagged datasets, leading to more effective virtual colonoscopy. In order to reduce the sensitivity towards intensity variation among the tagged residual material, we use a multi-step technique. First, we apply classification using an unsupervised and self-adapting vector quantization algorithm. Then, we sort the resultant classes by their average intensities. We apply thresholding on these classes based on a conservative threshold. This helps us in differentiating soft tissue inside tagged material from poorly tagged region or noise.
机译:我们使用基于矢量量化的分类提出了一种自动和鲁棒标记的残留检测技术。这种技术即使在标记不良的数据集上也能够电子清洁,导致更有效的虚拟结肠镜检查。为了降低标记残余材料之间对强度变化的敏感性,我们使用多步技术。首先,我们使用无监督和自适应矢量量化算法应用分类。然后,我们通过平均强度对所产生的课程进行排序。我们基于保守阈值在这些类上应用阈值处理。这有助于我们将标记材料内的软组织区分开在标记不良的区域或噪音中。

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