Shape and Structure Features Based Chinese Wine Classification

Yi Wan, Xingbo Sun, Rong Guo
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引用次数: 1

Abstract

Chinese wines can be classification or graded by the micrographs. Micrographs of Chinese wines show floccule,stick and granule of variant shape and size. Different wines have variant microstructure and micrographs, we study the classification of Chinese wines based on the micrographs. Shape and structure of wines’ particles in microstructure is the most important feature for recognition and classification of wines. So we introduce a new feature extraction method which can describe the structure and region shape of micrograph efficiently. First, the micrographs are enhanced using total variation denoising, and segmented using relative entropy thresholding. Then features are extracted using proposed method in the paper based on area, perimeter and traditional shape feature. Eight kinds total 26 features are selected. Finally, Chinese wine classification system based on micrograph using combination of shape and structure features and BP neural network have been presented. We compare the recognition results for different choices of features (traditional shape features or proposed features). The experimental results show that the better classification rate have been achieved using the combinational features proposed in this paper.
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基于形状和结构特征的中国葡萄酒分类
中国的酒可以用显微照片进行分类或分级。中国葡萄酒的显微照片显示出不同形状和大小的絮状、棒状和颗粒状。不同的葡萄酒有不同的微观结构和显微照片,我们研究了基于显微照片的中国葡萄酒分类。葡萄酒颗粒在微观结构上的形状和结构是葡萄酒识别和分类的重要特征。为此,我们提出了一种新的特征提取方法,可以有效地描述显微图像的结构和区域形状。首先,使用全变差去噪增强显微图像,并使用相对熵阈值分割。然后基于面积、周长和传统形状特征,采用本文提出的方法提取特征。总共选择了8种26个特征。最后,提出了基于形状和结构特征结合BP神经网络的中国葡萄酒显微分类系统。我们比较了不同特征选择(传统形状特征或建议特征)的识别结果。实验结果表明,采用本文提出的组合特征可以获得较好的分类率。
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