Research Center for Integrated Analysis and Territorial Management, University of Bucharest, 4-12 Regina Elisabeta, 030018 Bucharest, Romania.
Faculty of Administration and Business, University of Bucharest, 030018 Bucharest, Romania.
Sensors (Basel). 2023 Feb 26;23(5):2582. doi: 10.3390/s23052582.
Hexagonal grid layouts are advantageous in microarray technology; however, hexagonal grids appear in many fields, especially given the rise of new nanostructures and metamaterials, leading to the need for image analysis on such structures. This work proposes a shock-filter-based approach driven by mathematical morphology for the segmentation of image objects disposed in a hexagonal grid. The original image is decomposed into a pair of rectangular grids, such that their superposition generates the initial image. Within each rectangular grid, the shock-filters are once again used to confine the foreground information for each image object into an area of interest. The proposed methodology was successfully applied for microarray spot segmentation, whereas its character of generality is underlined by the segmentation results obtained for two other types of hexagonal grid layouts. Considering the segmentation accuracy through specific quality measures for microarray images, such as the mean absolute error and the coefficient of variation, high correlations of our computed spot intensity features with the annotated reference values were found, indicating the reliability of the proposed approach. Moreover, taking into account that the shock-filter PDE formalism is targeting the one-dimensional luminance profile function, the computational complexity to determine the grid is minimized. The order of growth for the computational complexity of our approach is at least one order of magnitude lower when compared with state-of-the-art microarray segmentation approaches, ranging from classical to machine learning ones.
六边形网格布局在微阵列技术中具有优势;然而,六边形网格在许多领域都有出现,特别是在新的纳米结构和超材料兴起的情况下,这就需要对这些结构进行图像分析。这项工作提出了一种基于数学形态学的冲击滤波器方法,用于分割排列在六边形网格中的图像对象。原始图像被分解为一对矩形网格,使得它们的叠加生成初始图像。在每个矩形网格中,再次使用冲击滤波器将每个图像对象的前景信息限制在感兴趣区域内。所提出的方法成功地应用于微阵列斑点分割,并且其通用性通过对另外两种类型的六边形网格布局的分割结果得到了强调。考虑到通过微阵列图像的特定质量度量(例如平均绝对误差和变化系数)来评估分割精度,我们计算的斑点强度特征与注释的参考值之间存在高度相关性,这表明了所提出方法的可靠性。此外,考虑到冲击滤波器 PDE 形式主义针对一维亮度分布函数,因此可以最小化确定网格的计算复杂度。与最先进的微阵列分割方法(从经典方法到机器学习方法)相比,我们的方法的计算复杂度的增长阶数至少低一个数量级。