Mei Mengwen, Cai Zhonglei, Zhang Xinran, Sun Chanjun, Zhang Junyi, Peng Huijie, Li Jiangbo, Shi Ruiyao, Zhang Wei
College of Mechanical and Electrical Engineering, Shihezi University, Shihezi, China.
Jiangsu Province and Education Ministry Co-sponsored Synergistic Innovation Center of Modern Agricultural Equipment, Jiangsu University, Zhenjiang, China.
Front Plant Sci. 2023 Nov 16;14:1324152. doi: 10.3389/fpls.2023.1324152. eCollection 2023.
Nondestructive detection of thin-skinned fruit bruising is one of the main challenges in the automated grading of post-harvest fruit. The structured-illumination reflectance imaging (SIRI) is an emerging optical technique with the potential for detection of bruises.
This study presented the pioneering application of low-cost visible-LED SIRI for detecting early subcutaneous bruises in 'Korla' pears. Three types of bruising degrees (mild, moderate and severe) and ten sets of spatial frequencies (50, 100, 150, 200, 250, 300, 350, 400, 450 and 500 cycles m) were analyzed. By evaluation of contrast index (CI) values, 150 cycles m was determined as the optimal spatial frequency. The sinusoidal pattern images were demodulated to get the DC, AC, and RT images without any stripe information. Based on AC and RT images, texture features were extracted and the LS-SVM, PLS-DA and KNN classification models combined the optimized features were developed for the detection of 'Korla' pears with varying degrees of bruising.
It was found that RT images consistently outperformed AC images regardless of type of model, and LS-SVM model exhibited the highest detection accuracy and stability. Across mild, moderate, severe and mixed bruises, the LS-SVM model with RT images achieved classification accuracies of 98.6%, 98.9%, 98.5%, and 98.8%, respectively. This study showed that visible-LED SIRI technique could effectively detect early bruising of 'Korla' pears, providing a valuable reference for using low-cost visible LED SIRI to detect fruit damage.
薄皮水果瘀伤的无损检测是收获后果实自动分级中的主要挑战之一。结构光照明反射成像(SIRI)是一种新兴的光学技术,具有检测瘀伤的潜力。
本研究展示了低成本可见LED SIRI在检测‘库尔勒’梨早期皮下瘀伤方面的开创性应用。分析了三种瘀伤程度(轻度、中度和重度)以及十组空间频率(50、100、150、200、250、300、350、400、450和500周/米)。通过评估对比度指数(CI)值,确定150周/米为最佳空间频率。对正弦图案图像进行解调以获得无条纹信息的直流(DC)、交流(AC)和实时(RT)图像。基于AC和RT图像,提取纹理特征,并开发了结合优化特征的最小二乘支持向量机(LS-SVM)、偏最小二乘判别分析(PLS-DA)和K近邻(KNN)分类模型,用于检测不同瘀伤程度的‘库尔勒’梨。
结果发现,无论模型类型如何,RT图像始终优于AC图像,并且LS-SVM模型表现出最高的检测精度和稳定性。在轻度、中度、重度和混合瘀伤情况下,使用RT图像的LS-SVM模型的分类准确率分别达到98.6%、98.9%、98.5%和98.8%。本研究表明,可见LED SIRI技术能够有效检测‘库尔勒’梨的早期瘀伤,为利用低成本可见LED SIRI检测水果损伤提供了有价值的参考。