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首页> 外文期刊>電子情報通信学会技術研究報告. 通信方式. Communication Systems >Improving Iterative Randomized Hough Transform for Automatic Detection of Fetal Head from Ultrasound Images
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Improving Iterative Randomized Hough Transform for Automatic Detection of Fetal Head from Ultrasound Images

机译:改进的迭代随机霍夫变换,用于从超声图像中自动检测胎儿头部

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摘要

In this paper, we propose an improved iterative randomized Hough transform (IRHT) method to detect fetal head automatically in ultrasound images. With the update of region of interest (ROI) in the IRHT method, the noise pixels are gradually excluded from the region of interest during iteration process, and the estimation becomes progressively close to the target. In order to enhance the efficiency and stability of this algorithm, we consider introducing the number (TV) of pixels on the detected ellipses, and select the ellipse with the maximal number of the pixels on the ellipse as the result for each iteration, which is selected from the top-M peaks in the accumulators of the whole detected ellipse samples. The experiments on fetal ultrasound images demonstrate that the proposed method achieves more robust and accurate results, and has a better performance for fetal head detection than the IRHT method.
机译:在本文中,我们提出了一种改进的迭代随机霍夫变换(IRHT)方法,可以自动在超声图像中检测胎儿的头部。随着IRHT方法中关注区域(ROI)的更新,在迭代过程中,噪声像素逐渐从关注区域中排除,估计逐渐接近目标。为了提高该算法的效率和稳定性,我们考虑在检测到的椭圆上引入像素数(TV),并选择椭圆上像素数最大的椭圆作为每次迭代的结果,即从整个检测到的椭圆样本的累加器中的前M个峰中选择。在胎儿超声图像上进行的实验表明,与IRHT方法相比,该方法取得了更鲁棒和准确的结果,并且在胎儿头部检测方面具有更好的性能。

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