基于红茶颗粒的紧凑型计算机视觉红茶品质评价

Suprijanto, A. Rakhmawati, E. Yuliastuti
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引用次数: 3

摘要

茶叶的品质决定了它的市场价值。在印度尼西亚,红茶标准质量评价参照印度尼西亚红茶国家标准(SNI) 01-1902-1995。目前,茶叶质量评价主要采用感官评价方法,如经培训的鉴定员进行视觉和香气检验,化学仪器方法,如气相色谱法和比色法评价。然而,这种方法相对来说需要更多的时间和精力,成本更高,有时也不准确。本研究旨在开发CTC级BP1红茶品质的紧凑型计算机视觉样机。在图像采集过程中,采用带照明器的标准盒和5倍放大镜的数码显微镜对茶叶颗粒的细节进行捕捉。在每个评价序列中,2,84克的颗粒大约由1000个颗粒组成。采用形态学操作对每个粒子进行标记,确定其面积(A)、周长(T)和弯曲能(E)参数。利用红色(R)和蓝色(B)通道的图像颜色直方图提取粒子的颜色信息。特征集由T/A、E、R和B四个参数值组成,每个参数值以一定的直方图间隔表示,并统一应用于所有特征集。这些特征集被用作多层感知器结构的人工神经网络(ANN)的输入,其中包含226个输入元素。采用反向传播算法,选取A、B、C品质茶叶颗粒30个数据集作为训练数据。除训练数据外,还使用30个数据集(A、B、C质量)对人工神经网络进行了验证。验证过程对茶叶颗粒质量的识别率为100%,与感官方法相匹配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compact computer vision for black tea quality evaluation based on the black tea particles
The quality of tea determines its market value. In Indonesia, the black tea standard quality evaluation refers to Indonesian National Standard (SNI) of black tea 01-1902-1995. At present, organoleptic evaluation as visual and aroma inspection by trained evaluator, chemical instrument as gas chromatography and colorimetric evaluation, are being used as the tea quality evaluation. However, this method relatively takes more time and energy, more expensive and sometimes inaccurate. This research was intended to develop compact computer vision prototype for CTC grade BP1 black tea quality. In image acquisition process, standard box with illuminator and digital microscope with 5x magnification were used to capture the detail of tea particles. Which in each sequence of evaluation, 2,84 gram particles approximately consists of 1000 granular particles was used. Morphology operation was applied to label each particle in which the parameter of area(A), perimeter(T) and bending energy(E) were determined. Furthermore, the particles' color information was extracted by use of image color histogram on red(R) and blue(B) channels. Feature sets are consist of T/A, E, R and B parameter values, each parameter value was represented in a certain interval of histogram and uniformly applied in all feature set. These feature sets were used as an input of artificial neural network(ANN) with architecture of multilayer perceptron and 226 input elements within. 30 data sets of tea particles with A, B and C qualities were used as training data with algorithm of backpropagation. The ANN was validated by use of 30 datasets (A, B, C qualities) apart from the training data. The validation process yielded 100% result in recognizing the tea particles qualities which matched the organoleptic method.
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