论文标题
基于人类感知的超高分辨率细胞膜分割的评估标准
Human Perception-based Evaluation Criterion for Ultra-high Resolution Cell Membrane Segmentation
论文作者
论文摘要
计算机视觉技术广泛用于生物学和医学数据分析和理解中。但是,在细胞膜分割领域,仍然有两个主要的瓶颈,这严重阻碍了进一步的研究:缺乏足够的高质量数据和缺乏合适的评估标准。为了解决这两个问题,本文首先提出了用于细胞膜的超高分辨率图像分割数据集,称为U-RISC,这是带有多个迭代注释和未压缩的高分辨率原始数据的细胞膜的最大注释电子显微镜(EM)数据集。在U-RISC的分析过程中,我们发现当前流行的分割评估标准与人类的感知不一致。涉及二十个人的主观实验证实了这一有趣的现象。此外,为了解决这种不一致,我们提出了一个称为感知Hausdorff距离(PHD)的新评估标准,以测量细胞膜分割结果的质量。在现有评估标准和博士学位下,详细的绩效比较和讨论经典分割方法以及两个迭代手动注释结果。
Computer vision technology is widely used in biological and medical data analysis and understanding. However, there are still two major bottlenecks in the field of cell membrane segmentation, which seriously hinder further research: lack of sufficient high-quality data and lack of suitable evaluation criteria. In order to solve these two problems, this paper first proposes an Ultra-high Resolution Image Segmentation dataset for the Cell membrane, called U-RISC, the largest annotated Electron Microscopy (EM) dataset for the Cell membrane with multiple iterative annotations and uncompressed high-resolution raw data. During the analysis process of the U-RISC, we found that the current popular segmentation evaluation criteria are inconsistent with human perception. This interesting phenomenon is confirmed by a subjective experiment involving twenty people. Furthermore, to resolve this inconsistency, we propose a new evaluation criterion called Perceptual Hausdorff Distance (PHD) to measure the quality of cell membrane segmentation results. Detailed performance comparison and discussion of classic segmentation methods along with two iterative manual annotation results under existing evaluation criteria and PHD is given.