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Fruit detection in natural environment using partial shape matching and probabilistic Hough transform

机译:使用部分形状匹配和概率霍夫变换的自然环境中的水果检测

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摘要

This paper proposes a novel technique for fruit detection in natural environments which is applicable in automatic harvesting robots, yield estimation systems and quality monitoring systems. As most color-based techniques are highly sensitive to illumination changes and low contrasts between fruits and leaves, the proposed technique, conversely, is based on contour information. Firstly, a discriminative shape descriptor is derived to represent geometrical properties of arbitrary fragment, and applied to a bidirectional partial shape matching to detect sub-fragments of interest that match parts of a reference contour. Then, a novel probabilistic Hough transform is developed to aggregate these sub-fragments for obtaining fruit candidates. Finally, all fruit candidates are verified by a support vector machine classifier trained on color and texture features. Citrus, tomato, pumpkin, bitter gourd, towel gourd and mango datasets were provided. Experiments on these datasets demonstrated that the proposed approach was competitive for detecting most type of fruits, such as green, orange, circular and non-circular, in natural environments.
机译:本文提出了一种新的果实检测技术,其自然环境中适用于自动收集机器人,产量估计系统和质量监测系统。由于大多数基于颜色的技术对照明变化高度敏感,并且水果和叶子之间的低对比度,相反地是基于轮廓信息。首先,导出辨别形状描述符以表示任意片段的几何特性,并应用于双向部分形状匹配以检测与参考轮廓的部分匹配的感兴趣的子片段。然后,开发了一种新颖的概率霍夫变换以聚合这些子片段以获得水果候选者。最后,所有果实候选者都是通过培训的颜色和纹理特征培训的支持向量机分类器验证。提供柑橘,番茄,南瓜,苦瓜,毛巾葫芦和芒果数据集。这些数据集的实验表明,该方法具有竞争检测到最大类型的水果,如绿色,橙色,圆形和非圆形,在自然环境中。

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