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Tomato Plant Diseases Classification Using Statistical Texture Feature and Color Feature

机译:番茄植物疾病使用统计纹理特征和颜色特征进行分类

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Plant disease classification has been associated with the production of essential food crops and human society. In this paper, we classify tomato plant disease using two different features: texture and color. For a texture feature, we extract statistical texture information (shape, scale and location) of an image from Scale invariant Feature Transform (SIFT) feature. As a main contribution, a new approach is introduced to model the Scale Invariant Feature Transform (SIFT) texture feature by Johnson SB distribution for statistical texture information of an image. The moment method is used to estimate the parameters of Johnson SB distribution. The mathematical representation of SIFT feature is matrix representation and too complex to be applied in image classification. Therefore, we propose a new statistical feature to represent the image in few numbers of dimensions. For a color feature, we extract statistical color information of an image from RGB color channel. The color statistics feature is the combination of mean, standard deviation and moments from degree three to five for each RGB color channel. Our proposed feature is a combination of statistical texture and color features to classify tomato plant disease. The experimental performance on PlantVillage database is compared with state-of-art feature vectors to highlight the advantages of the proposed feature.
机译:植物病分类与必要的粮食作物和人类社会的生产有关。在本文中,我们使用两种不同的特征来分类番茄植物疾病:纹理和颜色。对于纹理特征,我们从尺度不变特征变换(SIFT)功能中提取图像的统计纹理信息(形状,刻度和位置)。作为主要贡献,引入了一种新方法来模拟Johnson SB分布的尺度不变特征变换(SIFT)纹理特征,用于图像的统计纹理信息。瞬间方法用于估计约翰逊SB分布的参数。 SIFT特征的数学表示是矩阵表示和太复杂以应用于图像分类。因此,我们提出了一种新的统计特征,以表示缺少数量的尺寸。对于颜色特征,我们从RGB颜色通道提取图像的统计颜色信息。颜色统计特征是每个RGB颜色通道的平均值,标准偏差和三至五个矩的组合。我们所提出的特征是统计纹理和颜色特征的组合,用于分类番茄植物病。将Plantvillage数据库的实验性能与最先进的特征向量进行比较,以突出所提出的特征的优势。

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