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Error analysis in determining the centroids of circular objects in images

机译:确定图像中圆形物体的质心时的误差分析

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Detecting the size and/or location of circular object(s) in an image(s) has application in many areas, like, flow diagnostics, biomedical engineering, computer vision, etc. The detection accuracy of circular object(s) largely depends on the accuracy of centroiding algorithm and image preprocessing technique. In the present work, an error analysis is performed in determining the centroids of circular objects using synthetic images with eight different signal-to-noise ratios ranging from 2.7 to 17.8. In the first stage, four different centroiding algorithms, namely, Center of Mass, Weighted Center of Mass, Spath algorithm, and Hough transform, are studied and compared. The error analysis shows that Spath algorithm performs better than other algorithms. In the second stage, various image preprocessing techniques, consisting of two filters, namely, Median and Wiener, and five image segmentation methods, namely, Sobel, Prewitt, Laplacian of Gaussian (LoG) edge detector, basic global thresholding, and Otsu's global thresholding, are compared to determine the centroids of circular objects using Spath algorithm. It is found that Wiener filter plus LoG edge detector performs better than other preprocessing techniques. Real images of a calibration target (typical in flow diagnostics) and the secondary atomization of water droplets are then considered for centroids detection. These two images are preprocessed using Wiener filter plus LoG edge detector and then processed using Spath algorithm to detect the centroids of circular objects. It is observed that the results of real image of the calibration target and synthetic images are compara- ble. Also, based on visual inspection, the centroids detected in the real image of water droplets are found to be reasonably accurate.
机译:检测图像中圆形物体的大小和/或位置已在许多领域中应用,例如流动诊断,生物医学工程,计算机视觉等。圆形物体的检测精度很大程度上取决于质心算法的准确性和图像预处理技术。在当前工作中,使用具有八种不同的信噪比(范围从2.7到17.8)的合成图像,在确定圆形物体的质心时执行了误差分析。在第一阶段,研究并比较了四种不同的质心算法,即质心,加权质心,Spath算法和霍夫变换。误差分析表明,Spath算法的性能优于其他算法。在第二阶段,各种图像预处理技术由中值和维纳两个滤波器和五种图像分割方法组成,分别是Sobel,Prewitt,高斯拉普拉斯(LoG)边缘检测器,基本全局阈值和Otsu全局阈值使用Spath算法进行比较,以确定圆形对象的质心。发现Wiener滤波器加LoG边缘检测器的性能优于其他预处理技术。然后考虑将校准目标的真实图像(通常在流量诊断中)和水滴的二次雾化用于质心检测。使用维纳滤镜和LoG边缘检测器对这两幅图像进行预处理,然后使用Spath算法对其进行处理,以检测圆形物体的质心。可以看到,校准目标的真实图像和合成图像的结果是可比较的。而且,基于目视检查,发现在水滴的真实图像中检测到的质心是相当准确的。

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