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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Automatic initialization of active contours and level set method in ultrasound images of breast abnormalities
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Automatic initialization of active contours and level set method in ultrasound images of breast abnormalities

机译:乳房异常超声图像中有效轮廓和级别方法的自动初始化

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摘要

We propose a novel initialization method designed for active contours (AC) and the level set method (LSM), based on walking particles. The algorithm defines the seeds at converging and diverging configurations of the corresponding vector field. Next, the seeds "explode", generating a set of walking particles designed to differentiate between the seeds located inside and outside the object. The exploding seeds method (ESM) has been tested against five state-of-the-art initialization methods on 180 ultrasound images from a database collected by Thammasat University Hospital of Thailand. The set of images was additionally partitioned into malignant tumors, fibroadenomas and cysts. The method has been tested for each of those cases using the ground truth hand-drawn by leading radiologists of the hospital. The competing methods were: the trial snake (TS), centers of divergence (CoD), force field segmentation (FFS), Poisson Inverse Gradient Vector Flow (PIG), and quasi-automated initialization (QAI). The numerical tests demonstrated that CoD and FFS failed on the selected test images, whereas the average accuracy of PIG and QAI were lower than that achieved by the proposed method for both AC and the LSM. The LSM combined with the ESM provides the best results. (C) 2018 Elsevier Ltd. All rights reserved.
机译:我们提出了一种基于步行粒子的活动轮廓(AC)和电平集方法(LSM)设计的新型初始化方法。该算法在收敛和发散的相应矢量场的辐射配置中定义种子。接下来,种子“爆炸”,产生一组步行颗粒,该行走颗粒设计成区分位于物体内外的种子之间。爆炸种子方法(ESM)已经测试了来自泰国泰国大学院校收集的数据库的180个超声图像的五个最先进的初始化方法。将一组图像另外划分为恶性肿瘤,纤维腺瘤和囊肿。使用由医院的主要放射科学家手绘的地面真理来测试该方法。竞争方法是:试验蛇(TS),分歧中心(COD),力场分割(FFS),泊松逆梯度矢量流量(猪)和准自动化初始化(QAI)。数值测试证明COD和FFS在所选择的测试图像上失效,而猪和QAI的平均精度低于AC和LSM的所提出的方法所实现的。 LSM与ESM结合提供了最佳效果。 (c)2018年elestvier有限公司保留所有权利。

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