Melnikova Aleksandra, Maška Martin, Matula Petr
Masaryk University, Brno, Czech Republic.
Sci Rep. 2025 Mar 28;15(1):10713. doi: 10.1038/s41598-025-94977-0.
The preservation of morphological features, such as protrusions and concavities, and of the topology of input shapes is important when establishing reference data for benchmarking segmentation algorithms or when constructing a mean or median shape. We present a contourwise topology-preserving fusion method, called shape-aware topology-preserving means (SATM), for merging complex simply connected shapes. The method is based on key point matching and piecewise contour averaging. Unlike existing pixelwise and contourwise fusion methods, SATM preserves topology and does not smooth morphological features. We also present a detailed comparison of SATM with state-of-the-art fusion techniques for the purpose of benchmarking and median shape construction. Our experiments show that SATM outperforms these techniques in terms of shape-related measures that reflect shape complexity, manifesting itself as a reliable method for both establishing a consensus of segmentation annotations and for computing mean shapes.
在为基准分割算法建立参考数据或构建平均形状或中值形状时,保留诸如凸起和凹陷等形态特征以及输入形状的拓扑结构非常重要。我们提出了一种用于合并复杂单连通形状的逐轮廓拓扑保留融合方法,称为形状感知拓扑保留均值(SATM)。该方法基于关键点匹配和分段轮廓平均。与现有的逐像素和逐轮廓融合方法不同,SATM保留拓扑结构且不会平滑形态特征。为了进行基准测试和中值形状构建,我们还对SATM与最先进的融合技术进行了详细比较。我们的实验表明,在反映形状复杂性的与形状相关的度量方面,SATM优于这些技术,这表明它是一种用于建立分割注释共识和计算平均形状的可靠方法。