基于泰国农业标准的菠萝质量图像处理和模糊逻辑分级

B. Suksawat, Preecha Komkum
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引用次数: 15

摘要

本研究旨在根据泰国农产品食品标准的标准重量和尺寸,建立菠萝品质分级工具。菠萝的标准重量分为10个等级(a - j),菠萝的标准尺寸分为两个等级(I级和II级)。所开发的工具由硬件组件和分级软件程序组成。控制光源箱用于摄像机和称重传感器的安装,分别用于捕捉菠萝图像和测量菠萝重量。将得到的图像发送到软件程序中,将图像的颜色转换为灰度,并去除图像中的噪声。利用图像的清晰边缘来计算菠萝的大小,并将数据转移到模糊系统中。模糊系统的输入确定了菠萝的大小和重量,建立了20条模糊规则。采用随机选择南莱、斯里拉差、普吉3个菠萝品种的大小和重量进行试验。实验结果表明,所建立的工具对菠萝的大小和重量检测准确率较高,达到87.5%。尺寸和重量的平均相对误差分别为2.30%和5.24%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pineapple quality grading using image processing and fuzzy logic based on Thai Agriculture Standards
This research aimed to create a tool for pineapples quality grading according to the standard weight and size of Thai Agricultural Commodity Food Standard. The standard weights of pineapple are divided into 10 levels (A-J) and the standard sizes of pineapple are categorized into two classes (class I and class II). The developed tool consists of hardware components and a grading software program. The control light source box was constructed for camera and load cell installation to capture pineapple image and measure pineapple weight, respectively. The obtained image was sent to software program to change colors of the image into gray scale and to reduce noises in the image. The clearly edges of the image were employed to compute size of a pineapple and the data were transferred to fuzzy system. The inputs of fuzzy system determined the size and weight of pineapple which used to establish twenty fuzzy rules. The experiments performed by random selection size and weight of three pineapple kinds including Nanglae, Sriracha, Phuket. The experimental results reveal that classification of pineapple by the created tool exhibited high accuracy of size and weight detection equaled 87.5%. The average relative error performed 2.30% and 5.24% of size and weight, respectively.
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