We report promising results for high-throughput on-field soybean pod count with small mobile robots and machine-vision algorithms. Our results show that the machine-vision based soybean pod counts are strongly correlated with soybean yield. While pod counts has a strong correlation with soybean yield, pod counting is extremely labor intensive, and has been difficult to automate. Our results establish that an autonomous robot equipped with vision sensors can autonomously collect soybean data at maturity. Machine-vision algorithms can be used to estimate pod-counts across a large diversity panel planted across experimental units (EUs, or plots) in a high-throughput, automated manner. We report a correlation of 0.67 between our automated pod counts and soybean yield. The data was collected in an experiment consisting of 1463 single-row plots maintained by the University of Illinois soybean breeding program during the 2020 growing season. We also report a correlation of 0.88 between automated pod counts and manual pod counts over a smaller data set of 16 plots.
翻译:我们通过小型移动机器人和机视算法报告了高通量大豆舱数的可喜结果。我们的结果表明,机视大豆舱数与大豆产值密切相关。虽然机视大豆舱数与大豆产值密切相关,但机算数与大豆产值密切相关,但机算数与大豆产值密切相关,而且极难自动化。我们的结果表明,装有视觉传感器的自主机器人可以在成熟时自动收集大豆数据。机视算法可以用来估计以高通量、自动方式在实验单位(EU或地块)的大型多样性小组中安装的小豆群数。我们报告,我们自动化舱数与大豆产值之间有0.67个相关关系。这些数据是在伊利诺伊大学大豆繁殖方案在2020年生长季节维持的1463块单行地块实验中收集的。我们还报告,在16块小块的小型数据组中,自动机算数和人工舱数之间有0.88个相关数据。