Appl Opt. 2022 Jun 10;61(17):5289-5298. doi: 10.1364/AO.450384.
Multispectral imaging has been recently proposed for high-speed sorting and grading machine vision of fruits. It is a prospective method applied in yet traditional sorting and grading of oil palm fresh fruit bunches (FFB). The ripeness of oil palm FFBs determines the quality of crude palm oil (CPO). Implementation of multispectral imaging for the task needs wavelength selection from hyperspectral datasets. This study aimed to obtain the optimum wavelengths and use them for oil palm FFB classification based on three ripeness levels. We have selected eight optimum wavelengths using principal component analysis (PCA) regression which represented the ripeness levels.
多光谱成像技术最近被提议用于水果的高速分拣和分级机器视觉。这是一种应用于传统油棕鲜果串(FFB)分拣和分级的有前景的方法。油棕 FFB 的成熟度决定了毛棕榈油(CPO)的质量。为了完成多光谱成像任务,需要从高光谱数据集中选择波长。本研究旨在获得最佳波长,并基于三个成熟度水平将其用于油棕 FFB 分类。我们使用主成分分析(PCA)回归选择了八个最佳波长,这些波长代表了成熟度水平。