基于几何和纹理特征的花粉粒分类

Georgios C. Manikis, K. Marias, E. Alissandrakis, L. Perrotto, E. Savvidaki, N. Vidakis
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引用次数: 4

摘要

本研究提出了一种结合机器学习算法的图像分析框架,用于显微镜下花粉颗粒图像的分类。花粉粒分类在古生物学和蜂蜜鉴定、空气中花粉过敏预测和食品技术等方面有着广泛的应用。它需要一个广泛的定性过程,主要由专家手动执行。人工分类虽然表现出令人满意的性能,但存在观察者内部和观察者之间的可变性,而且耗时长。本研究得益于图像处理和机器学习的进步,并提出了一个全自动分析管道,旨在:a)使用成本效益高的显微镜从图像中计算形态特征,b)将图像分为6个花粉类。该研究使用了克里特岛希腊地中海大学农业部的一个私人数据集,其中包含564张图像。采用随机森林(RF)分类器对图像进行分类。使用重复嵌套交叉验证(nested- cv)模式来估计泛化性能并防止过拟合。在评估分类性能之前,对图像进行预处理、几何特征和纹理特征提取以及特征选择,平均准确率为88.24%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pollen Grain Classification using Geometrical and Textural Features
This study presents an image analysis framework coupled with machine learning algorithms for the classification of microscopy pollen grain images. Pollen grain classification has received notable attention concerning a wide range of applications such as paleontology and honey certification, forecasting of allergies caused of airborne pollen and food technology. It requires an extensive qualitative process that is mostly performed manually by an expert. Although manual classification shows satisfactory performance, it may suffer from intra and inter-observer variability and it is time consuming. This study benefits from the advances of image processing and machine learning and proposes a fully-automated analysis pipeline aiming to: A) calculate morphological characteristics from the images using a cost-effective microscope, and b) classify images into 6 pollen classes. A private dataset from the Department of Agriculture of the Hellenic Mediterranean University in Crete containing 564 images was used in this study. A Random Forest (RF) classifier was utilized to classify images. A repeated nested cross-validation (nested-CV) schema was used to estimate the generalization performance and prevent overfitting. Image preprocessing, extraction of geometric and textural characteristics and feature selection were implemented prior to the assessment of the classification performance and a mean accuracy of 88.24% was reported.
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