用于分析人造不规则聚乙烯微粒尺寸和形状的图像处理工具

M. Fritz, Lukas F. Deutsch, Karunia Putra Wijaya, Thomas Götz, Christian B. Fischer
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摘要

微塑料(MPs)具有吸收、吸附和解吸有机污染物的能力,因此对人类和动物构成重大风险。从沉积物或水体中捕捉微塑料对风险评估至关重要,但对不规则形状微粒的快速有效定量研究却很少。许多研究采用显微镜方法对 MP 颗粒进行计数,但这种方法对于大样本量的颗粒来说十分繁琐。作为替代方法,本研究提出了一种在免费软件 GNU Octave 中开发的算法,用于分析具有不同大小和形状的 MP 粒子的显微镜图像。该算法可以检测和区分不同的颗粒,补偿光照不均和图像对比度低的问题,找到高对比度区域,统一边缘区域,并填充堆叠颗粒的剩余像素。该全自动算法可计算凸度、实心度、倒数长宽比、矩形度和费雷特主轴比等形状参数,并生成粒度分布。研究测试了尺寸为 50-100 微米和 200-300 微米的低密度聚乙烯颗粒。使用 Octave 分析的扫描电子显微镜图像系列与使用 ImageJ 进行的人工评估进行了比较。尽管全自动算法并不能识别所有颗粒,但综合测试证明了一种定性准确的颗粒尺寸和形状监测方法适用于任何 MP,它能在短时间内处理较大的数据集,并与基于 MATLAB 的代码兼容。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Image-Processing Tool for Size and Shape Analysis of Manufactured Irregular Polyethylene Microparticles
Microplastics (MPs) pose a significant risk to humans and animals due to their ability to absorb, adsorb, and desorb organic pollutants. MPs catchment from either sediments or water bodies is crucial for risk assessment, but fast and effective particle quantification of irregularly shaped particles is only marginally addressed. Many studies used microscopy methods to count MP particles, which are tedious for large sample sizes. Alternatively, this work presents an algorithm developed in the free software GNU Octave to analyze microscope images of MP particles with variable sizes and shapes. The algorithm can detect and distinguish different particles, compensate for uneven illumination and low image contrast, find high-contrast areas, unify edge regions, and fill the remaining pixels of stacked particles. The fully automatic algorithm calculates shape parameters such as convexity, solidity, reciprocal aspect ratio, rectangularity, and the Feret major axis ratio and generates the particle size distribution. The study tested low-density polyethylene particles with sizes of 50–100 µm and 200–300 µm. A scanning electron microscope image series analyzed with Octave was compared to a manual evaluation using ImageJ. Although the fully automatic algorithm did not identify all particles, the comprehensive tests demonstrate a qualitatively accurate particle size and shape monitoring applicable to any MPs, which processes larger data sets in a short time and is compatible with MATLAB-based codes.
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