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Extracting contours of oval-shaped objects by Hough transform and minimal path algorithms

机译:通过霍夫变换和最小路径算法提取椭圆形物体的轮廓

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Circular and oval-like objects are very common in cell and micro biology. These objects need to be analyzed, and to that end, digitized images from the microscope are used so as to come to an automated analysis pipeline. It is essential to detect all the objects in an image as well as to extract the exact contour of each individual object. In this manner it becomes possible to perform measurements on these objects, i.e. shape and texture features. Our measurement objective is achieved by probing contour detection through dynamic programming. In this paper we describe a method that uses Hough transform and two minimal path algorithms to detect contours of (ovoid-like) objects. These algorithms are based on an existing grey-weighted distance transform and a new algorithm to extract the circular shortest path in an image. The methods are tested on an artificial dataset of a 1000 images, with an F1-score of 0.972. In a case study with yeast cells, contours from our methods were compared with another solution using Pratt's figure of merit. Results indicate that our methods were more precise based on a comparison with a ground-truth dataset. As far as yeast cells are concerned, the segmentation and measurement results enable, in future work, to retrieve information from different developmental stages of the cell using complex features.
机译:圆形和椭圆形的物体在细胞和微生物中非常常见。这些对象需要进行分析,为此,使用了来自显微镜的数字化图像以进入自动分析流程。检测图像中的所有对象以及提取每个单独对象的精确轮廓至关重要。以这种方式,有可能在这些物体上执行测量,即形状和纹理特征。我们的测量目标是通过动态编程探测轮廓检测来实现的。在本文中,我们描述了一种使用霍夫变换和两个最小路径算法来检测(卵形)物体轮廓的方法。这些算法基于现有的灰度加权距离变换和提取图像中圆形最短路径的新算法。该方法在1000幅图像的人工数据集上进行了测试,F1评分为0.972。在一个酵母细胞的案例研究中,我们使用Pratt的品质因数将我们方法的轮廓与另一种解决方案进行了比较。结果表明,根据与真实数据集的比较,我们的方法更加精确。就酵母细胞而言,分段和测量结果使得在将来的工作中能够使用复杂的功能从细胞的不同发育阶段检索信息。

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