College of Mechanical and Electronic Engineering, Northwest A&F University, Yangling, China.
PLoS One. 2019 Jul 18;14(7):e0219803. doi: 10.1371/journal.pone.0219803. eCollection 2019.
This paper attempts to design an automated, efficient and intelligent tomato grading method that facilitates the graded selling of the fruit. Based on machine vision, the color images of tomatoes with different morphologies were studied, and the color, shape and size were selected as the key features. On this basis, an automated grading classifier was created based on the surface features of tomatoes, and a grading platform was set up to verify the effect of the classifier. Specifically, the Hue value distributions of tomatoes with different maturities were investigated, and the Hue value ranges were determined for mature, semi-mature and immature tomatoes, producing the color classifier. Next, the first-order Fourier descriptor (1D- FD) was adopted to describe the radius sequence of tomato contour, and an equation was established to compute the irregularity of tomato contour, creating the shape classifier. After that, a linear regression equation was constructed to reflect the relationship between the transverse diameters of actual tomatoes and tomato images, and a classifier between large, medium and small tomatoes was produced based on the transverse diameter. Finally, a comprehensive tomato classifier was built based on the color, shape and size diameters. The experimental results show that the mean grading accuracy of the proposed method was 90.7%. This means our method can achieve automated real-time grading of tomatoes.
本文旨在设计一种自动化、高效且智能的番茄分级方法,以方便对果实进行分级销售。基于机器视觉,研究了具有不同形态的番茄的彩色图像,并选择颜色、形状和大小作为关键特征。在此基础上,基于番茄的表面特征创建了自动分级分类器,并建立了分级平台来验证分类器的效果。具体来说,研究了不同成熟度番茄的 Hue 值分布,并确定了成熟、半成熟和未成熟番茄的 Hue 值范围,从而生成颜色分类器。然后,采用一阶傅里叶描述符(1D-FD)描述番茄轮廓的半径序列,并建立计算番茄轮廓不规则度的方程,生成形状分类器。之后,构建了一个线性回归方程来反映实际番茄的横径与番茄图像之间的关系,根据横径生成大、中、小番茄的分类器。最后,基于颜色、形状和大小直径构建了一个综合的番茄分类器。实验结果表明,所提出方法的平均分级准确率为 90.7%。这意味着我们的方法可以实现番茄的自动化实时分级。