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Detection of incomplete ellipse in images with strong noise by iterative randomized Hough transform (IRHT)

机译:通过迭代随机霍夫变换(IRHT)检测强噪声图像中的不完整椭圆

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An iterative randomized Hough transform (IRHT) is developed for detection of incomplete ellipses in images with strong noise. The IRHT iteratively applies the randomized Hough transform (RHT) to a region of interest in the image space. The region of interest is determined from the latest estimation of ellipse parameters. The IRHT "zooms in" on the target curve by iterative parameter adjustments and reciprocating use of the image and parameter spaces. During the iteration process, noise pixels are gradually excluded from the region of interest, and the estimation becomes progressively close to the target. The IRHT retains the advantages of RHT of high parameter resolution, computational simplicity and small storage while overcoming the noise susceptibility of RHT. Indivisible, multiple instances of ellipse can be sequentially detected. The IRHT was first tested for ellipse detection with synthesized images. It was then applied to fetal head detection in medical ultrasound images. The results demonstrate that the IRHT is a robust and efficient ellipse detection method for real-world applications. (c) 2007 Elsevier Ltd. All rights reserved.
机译:开发了一种迭代随机霍夫变换(IRHT),用于检测强噪声图像中的不完整椭圆。 IRHT迭代地将随机霍夫变换(RHT)应用于图像空间中的关注区域。根据椭圆参数的最新估计确定关注区域。 IRHT通过迭代参数调整以及图像和参数空间的往复使用来“放大”目标曲线。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。 IRHT保留了RHT的优点,它具有高参数分辨率,计算简单和存储量小的优点,同时克服了RHT的噪声敏感性。不可分割的椭圆的多个实例可以顺序检测。首先用合成图像对IRHT进行椭圆检测测试。然后将其应用于医学超声图像中的胎儿头部检测。结果表明,IRHT是一种针对实际应用的强大而有效的椭圆检测方法。 (c)2007 Elsevier Ltd.保留所有权利。

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