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Detection of Overlapped Apples in Orchard Scene Using Improved K-means and Distance Least Square

机译:利用改进的K均值和距离最小二乘检测果园中重叠的苹果

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Automatic detection of mature apples in a complex agricultural condition is still a challenge for an autonomous picking robot due to the influence from overlapping. In order to detecting overlapped apples in tree canopy using a low-cost camera, a robust apples detection and reconstruction approach based on improved K-means and distance least square algorithm was studied. Firstly, the region of potential apple objects was extracted by using improved K-means algorithm. Then, the contours of apples were obtained by utilizing Canny edge detection algorithm on the V component map and the intact contour of unobscured apple was separated from overlapped apples contour after Y-junction searching. Finally, the contour of obscured apple was reconstructed by use of the distance least square circle fitting algorithm. The proposed method was compared with Hough transform method and the experimental result indicated that the proposed method could get much better performance for overlapped apples detection than Hough transform method. Thus it could be concluded that the proposed method is available for robotic apple picking in overlapped fruits scene with low cost.
机译:由于重叠的影响,在复杂的农业条件下对成熟苹果的自动检测对于自主采摘机器人仍然是一个挑战。为了利用低成本的摄像机检测树冠中的重叠苹果,研究了一种基于改进的K均值和最小二乘距离算法的鲁棒苹果检测和重构方法。首先,使用改进的K-means算法提取潜在的苹果物体区域。然后,利用Canny边缘检测算法在V分量图上获得苹果的轮廓,并在Y轴搜索后将完整的苹果轮廓从重叠的苹果轮廓中分离出来。最后,利用距离最小二乘圆拟合算法重建了模糊苹果的轮廓。将本文提出的方法与霍夫变换方法进行了比较,实验结果表明,所提出的方法在重叠苹果检测中具有比霍夫变换方法更好的检测性能。因此可以得出结论,该方法可用于低成本重叠水果现场的机器人采摘。

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