论文标题

使用计算机视觉的自主苹果果实尺寸和增长率跟踪

Autonomous Apple Fruitlet Sizing and Growth Rate Tracking using Computer Vision

论文作者

Freeman, Harry, Qadri, Mohamad, Silwal, Abhisesh, O'Connor, Paul, Rubinstein, Zachary, Cooley, Daniel, Kantor, George

论文摘要

在本文中,我们提出了一种基于计算机视觉的方法,以衡量苹果水果的大小和增长率。测量苹果果实的生长速率很重要,因为它允许苹果种植者确定何时将化学稀释剂涂在农作物中以优化产量。当前获得增长率的实践涉及使用卡尺来记录多天的水果大小。由于需要大小的水果量,这种方法是费力的,耗时的,容易发生人为错误。带有手持立体声摄像机收集的图像,我们的系统,段,簇,并适合椭圆形,以测量其直径。然后,通过在时间上将聚类的果实关联到时间上来计算增长率。我们为在苹果园中收集的数据提供定量结果,并证明我们的系统能够预测当前方法的3.5%以内的速率,速度提高了6倍,同时需要减少手动努力。此外,我们提供了现场机器人系统捕获的图像的结果,并讨论使过程完全自主所需的下一步步骤。

In this paper, we present a computer vision-based approach to measure the sizes and growth rates of apple fruitlets. Measuring the growth rates of apple fruitlets is important because it allows apple growers to determine when to apply chemical thinners to their crops in order to optimize yield. The current practice of obtaining growth rates involves using calipers to record sizes of fruitlets across multiple days. Due to the number of fruitlets needed to be sized, this method is laborious, time-consuming, and prone to human error. With images collected by a hand-held stereo camera, our system, segments, clusters, and fits ellipses to fruitlets to measure their diameters. The growth rates are then calculated by temporally associating clustered fruitlets across days. We provide quantitative results on data collected in an apple orchard, and demonstrate that our system is able to predict abscise rates within 3.5% of the current method with a 6 times improvement in speed, while requiring significantly less manual effort. Moreover, we provide results on images captured by a robotic system in the field, and discuss the next steps required to make the process fully autonomous.

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