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Histogram based color pattern identification of multiclass fruit using feature selection

机译:基于特征选择的直方图彩色水果多色模式识别

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Color histogram has been widely used in feature extraction to represent color feature of an object in the image. In this paper, we identify which features that give high contribution in classification performance, because not all features are directly correlated with object category. In the case of n-bins color histogram, features were referred to color intensity range of color histogram. On the one hand, we consider fruit classification, where the feature space contains various properties of pixel intensities of RGB (Red-Green-Blue) channel. On selecting feature subset, we consider filter method of feature selection. In the filter method, we successively reduce the size of the feature sets and investigate the changes in the classification results. Specifically, we followed the filtering approach to feature selection: selecting features in a single pass first and then applying a classification algorithm independently. We used chi square feature selection to determine relevant features from RGB histogram. Further, we used and evaluated those relevant features in a classification system, using K-Nearest Neighbor (KNN) as classifier. In this paper we show that by conducting feature selection techniques combined with KNN we would be able to prune non-relevant intensities value of Red, Green, and Blue channel. Furthermore, we use the relevant subset of features to identify intensities range of RGB channel that was needed to represent 32 subcategories fruit image efficiently.
机译:颜色直方图已广泛用于特征提取中,以表示图像中对象的颜色特征。在本文中,我们确定哪些特征对分类性能有重要贡献,因为并非所有特征都与对象类别直接相关。在n仓颜色直方图的情况下,将特征称为颜色直方图的颜色强度范围。一方面,我们考虑水果分类,其中特征空间包含RGB(红-绿-蓝)通道的像素强度的各种属性。在选择特征子集时,我们考虑特征选择的过滤方法。在过滤方法中,我们先减小特征集的大小,然后研究分类结果的变化。具体来说,我们遵循过滤方法进行特征选择:首先单次选择特征,然后独立应用分类算法。我们使用卡方特征选择从RGB直方图中确定相关特征。此外,我们使用K最近邻(KNN)作为分类器,在分类系统中使用和评估了这些相关特征。在本文中,我们证明了通过结合使用KNN进行特征选择技术,我们可以修剪红色,绿色和蓝色通道的无关强度值。此外,我们使用特征的相关子集来识别有效表示32个子类别水果图像所需的RGB通道的强度范围。

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