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Improving Active Shape Models Performance in Low-Contrast Images Using a KNN-based Search Algorithm - With Applications In Liver Segmentation

机译:使用基于KNN的搜索算法改善低对比度图像的主动形状​​模型性能 - 在肝分段中的应用

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Active Shape Model (ASM) is considered as a high level image processing algorithm. Typical applications include image segmentation and interpretation. A major challenge in ASMs is to repeatedly move model points towards true boundaries. It is a crucial step in the algorithm which fails in cases of low contrast images. In this paper, we present a new search algorithm for ASM to tackle segmentation of tissues with nearby organs of similar intensities. We train a KNN classifier and employ it to label the region surroundings each mesh point and move the point towards the boundary. Thus, evolution of the initial surface is performed faster in a single step. Evaluation of the proposed method was carried out by Dice and Jaccard similarity measure and accuracy index. The results of segmentation were compared with the results of Active Contour Model and conventional ASM. The Dice (Jaccard) indices are 0.93 (0.87), 0.85 (0.73) and 0.9 (0.76) for our method, conventional ASM and ACM, respectively. Moreover, the accuracy is increased in the proposed method compared to the two other methods.
机译:主动形状模型(ASM)被认为是高级图像处理算法。典型应用包括图像分割和解释。 ASMS中的一项重大挑战是反复将模型点转向真正的边界。它是在低对比度图像的情况下失败的算法的重要步骤。在本文中,我们为ASM提供了一种新的搜索算法,以与类似强度的附近器官的组织分段进行粘接。我们训练KNN分类器,用它来标记每个网格点的区域周围环境,并向边界移动点。因此,初始表面的演变在单个步骤中更快地执行。通过骰子和jaccard相似度测量和准确度指数进行所提出的方法的评估。将分割结果与活性轮廓模型和常规ASM的结果进行比较。骰子(JAccard)索引分别为我们的方法,常规ASM和ACM的0.93(0.87),0.85(0.73)和0.9(0.76)。此外,与另外两种方法相比,所提出的方法的精度增加。

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