Department of Biosystems Engineering, Poznań University of Life Sciences, 50 Wojska Polskiego Str., 60-627 Poznań, Poland.
Department of Hydraulic and Sanitary Engineering, Poznań University of Life Sciences, 94A Piątkowska Str., 60-649 Poznań, Poland.
Sensors (Basel). 2022 Aug 31;22(17):6578. doi: 10.3390/s22176578.
The paper covers the problem of determination of defects and contamination in malting barley grains. The analysis of the problem indicated that although several attempts have been made, there are still no effective methods of identification of the quality of barley grains, such as the use of information technology, including intelligent sensors (currently, quality assessment of grain is performed manually). The aim of the study was the construction of a reduced set of the most important graphic descriptors from machine-collected digital images, important in the process of neural evaluation of the quality of BOJOS variety malting barley. Grains were sorted into three size fractions and seed images were collected. As a large number of graphic descriptors implied difficulties in the development and operation of neural classifiers, a PCA (Principal Component Analysis) statistical method of reducing empirical data contained in the analyzed set was applied. The grain quality expressed by an optimal set of transformed descriptors was modelled using artificial neural networks (ANN). The input layer consisted of eight neurons with a linear Postsynaptic Function (PSP) and a linear activation function. The one hidden layer was composed of sigmoid neurons having a linear PSP function and a logistic activation function. One sigmoid neuron was the output of the network. The results obtained show that neural identification of digital images with application of Principal Component Analysis (PCA) combined with neural classification is an effective tool supporting the process of rapid and reliable quality assessment of BOJOS malting barley grains.
本文探讨了麦芽大麦籽粒缺陷和污染检测的问题。分析表明,尽管已经进行了多次尝试,但仍缺乏有效的大麦籽粒质量识别方法,例如利用信息技术,包括智能传感器(目前,谷物质量评估仍为人工操作)。本研究的目的是构建一个从机器收集的数字图像中提取的重要图形描述符的简化集,这些描述符对于 BOJOS 品种麦芽大麦的神经评估质量过程非常重要。将大麦籽粒分为三个粒度级,并采集种子图像。由于大量的图形描述符给神经网络分类器的开发和运行带来了困难,因此应用了主成分分析(PCA)统计方法来减少分析集中包含的经验数据。利用人工神经网络(ANN)对由最优变换描述符集表示的谷物质量进行建模。输入层由具有线性突触后函数(PSP)和线性激活函数的 8 个神经元组成。一个隐藏层由具有线性 PSP 函数和逻辑激活函数的 Sigmoid 神经元组成。一个 Sigmoid 神经元是网络的输出。研究结果表明,应用主成分分析(PCA)结合神经网络分类的数字图像神经识别是一种支持 BOJOS 麦芽大麦籽粒快速可靠质量评估过程的有效工具。