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Machine vision based automatic sorting of cherry tomatoes

机译:基于机器视觉樱桃番茄的自动分类

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Tomatoes will be harvested at the earlier stage for longer market life. Therefore while grading tomatoes, maturity as well the quality need to be considered. In this paper automatic and non destructive grading of cherry tomatoes based on maturity and quality has been proposed. This algorithm comprises two phases of grading. First phase grades tomatoes in terms of maturity and the second phase grades matured tomatoes in terms of quality. Using the concept of change in external color during different maturity stages, a color based maturity estimation algorithm has been proposed. And to classify the tomato in the second phase, texture, color and shape features correlated to external and internal characteristics are extracted from the surface of tomato. To extract the tomato surface alone from the background and leaves a new color based segmentation based on Euclidean distance has also been proposed. Then the extracted features are given to K-Nearest Neighbor based Support Vector Machine classifier to classify the matured fruit into three classes Class I, II and III. This classifier outperforms both SVM and KNN classifier in terms of accuracy and computation time.
机译:西红柿将在早期的阶段收获,以便更长的市场生活。因此,在分级西红柿,期待质量也需要考虑。在本文中,提出了基于成熟和质量的樱桃番茄的自动和不破坏性分级。该算法包括分级的两个阶段。在成熟期间和第二阶段的第一阶段毕业等级在质量方面成熟了西红柿。在不同成熟度期间使用外部颜色的变化概念,已经提出了一种颜色的成熟度估计算法。并在第二阶段将番茄分类,从番茄表面提取与外部和内部特性相关的纹理,颜色和形状特征。为了从背景中提取番茄表面,并提出了基于欧几里德距离的新的基于基于颜色的分段。然后,提取的特征被给予K-Collect邻的基于支持向量机分类器,以将成熟的水果分类为三类I,II和III。该分类器在准确性和计算时间方面优于SVM和KNN分类器。

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