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ACCURATE LANDMARK-BASED SEGMENTATION BY INCORPORATING LANDMARK MISDETECTIONS

机译:通过纳入地标误认为基于地标的分割准确

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We propose a novel approach to landmark detection, where the appearance of landmarks is modeled by Haar-like features and a random forest classifier, and spatial relationships among landmarks are modeled by Gaussian distributions augmented by shape-based random forest classifiers for identification of landmark misdetections. The proposed approach was evaluated on segmentation of lung fields from a publicly available database of chest radiographs, and the resulting segmentation performance was 1.43 ± 0.85 mm in terms of boundary-to-boundary distance and 95.3 ± 2.0% in terms of area overlap coefficient. By objective comparison to existing state-of-the-art approaches, the proposed approach proved superior in terms of segmentation results and computational efficiency.
机译:我们提出了一种新的地标检测方法,其中地标外观是由哈尔样特征和随机森林分类器建模的,并且地标之间的空间关系由高斯分布模型,由基于形状的随机森林分类器增强,用于识别地标误解 。 从胸部射线照片的公开可用数据库中,评估了所提出的方法,并且在边界到边界距离方面,所产生的分割性能为1.43±0.85mm,在区域重叠系数方面95.3±2.0%。 通过客观与现有最先进的方法进行比较,所提出的方法在分割结果和计算效率方面得到了优势。

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