Department of Agronomy, Poznań University of Life Sciences, Dojazd 11, 60-632 Poznań, Poland.
Department of Genetics and Plant Breeding, Poznań University of Life Sciences, Dojazd 11, 60-632 Poznań, Poland.
Sensors (Basel). 2024 Jan 16;24(2):558. doi: 10.3390/s24020558.
The popularity and demand for high-quality date palm fruits ( L.) have been growing, and their quality largely depends on the type of handling, storage, and processing methods. The current methods of geometric evaluation and classification of date palm fruits are characterised by high labour intensity and are usually performed mechanically, which may cause additional damage and reduce the quality and value of the product. Therefore, non-contact methods are being sought based on image analysis, with digital solutions controlling the evaluation and classification processes. The main objective of this paper is to develop an automatic classification model for varieties of date palm fruits using a convolutional neural network (CNN) based on two fundamental criteria, i.e., colour difference and evaluation of geometric parameters of dates. A CNN with a fixed architecture was built, marked as DateNET, consisting of a system of five alternating Conv2D, MaxPooling2D, and Dropout classes. The validation accuracy of the model presented in this study depended on the selection of classification criteria. It was 85.24% for fruit colour-based classification and 87.62% for the geometric parameters only; however, it increased considerably to 93.41% when both the colour and geometry of dates were considered.
高品质的椰枣果实(L.)越来越受欢迎和需求,其质量在很大程度上取决于处理、储存和加工方法的类型。目前的椰枣果实几何评估和分类方法的特点是劳动强度高,通常是机械操作,这可能会造成额外的损坏,降低产品的质量和价值。因此,正在寻求基于图像分析的非接触式方法,数字解决方案控制评估和分类过程。本文的主要目的是开发一种基于卷积神经网络(CNN)的椰枣果实自动分类模型,该模型基于两个基本标准,即色差和评估日期的几何参数。建立了一个固定架构的 CNN,标记为 DateNET,由五个交替的 Conv2D、MaxPooling2D 和 Dropout 类组成。本研究提出的模型的验证准确性取决于分类标准的选择。基于果实颜色的分类准确率为 85.24%,仅基于几何参数的分类准确率为 87.62%;然而,当同时考虑日期的颜色和几何形状时,准确率显著提高到 93.41%。