Holt K A, Bennett K D
New Phytol. 2014 Aug;203(3):735-42. doi: 10.1111/nph.12848.
Pollen grains are microscopic so their identification and quantification has, for decades, depended upon human observers using light microscopes: a labour-intensive approach. Modern improvements in computing and imaging hardware and software now bring automation of pollen analyses within reach. In this paper, we provide the first review in over 15 yr of progress towards automation of the part of palynology concerned with counting and classifying pollen, bringing together literature published from a wide spectrum of sources. We consider which attempts offer the most potential for an automated palynology system for universal application across all fields of research concerned with pollen classification and counting. We discuss what is required to make the datasets of these automated systems as acceptable as those produced by human palynologists, and present suggestions for how automation will generate novel approaches to counting and classifying pollen that have hitherto been unthinkable.
花粉粒是微观的,因此几十年来,它们的识别和定量一直依赖于人类观察者使用光学显微镜:这是一种劳动密集型方法。现代计算以及成像硬件和软件的改进现在使得花粉分析自动化成为可能。在本文中,我们对孢粉学中与花粉计数和分类相关部分的自动化进展进行了15多年来的首次综述,汇集了来自广泛来源的文献。我们考虑哪些尝试对于适用于所有与花粉分类和计数相关研究领域的通用自动化孢粉学系统最具潜力。我们讨论了要使这些自动化系统的数据集与人类孢粉学家产生的数据集一样可接受需要具备什么条件,并提出了关于自动化将如何产生迄今难以想象的花粉计数和分类新方法的建议。