In this paper, we present a method for creating high-quality 3D models of sorghum panicles for phenotyping in breeding experiments. This is achieved with a novel reconstruction approach that uses seeds as semantic landmarks in both 2D and 3D. To evaluate the performance, we develop a new metric for assessing the quality of reconstructed point clouds without having a ground-truth point cloud. Finally, a counting method is presented where the density of seed centers in the 3D model allows 2D counts from multiple views to be effectively combined into a whole-panicle count. We demonstrate that using this method to estimate seed count and weight for sorghum outperforms count extrapolation from 2D images, an approach used in most state of the art methods for seeds and grains of comparable size.
翻译:在本文中,我们展示了一种方法,用于创建高质量的高梁恐慌模型,供繁殖实验中出现性欲时使用。这是通过一种新的重建方法实现的,这种方法将种子作为2D和3D的语义标志。为了评估绩效,我们开发了一种新的指标,用于评估重建点云的质量,而没有地面真相点云。最后,在3D模型中的种子中心的密度允许将多种观点中的2D计数有效结合成一个整体计数。我们证明,使用这种方法估算高梁外形的种子计数和重量可以计算出2D图像的外推法,这是大多数情况下用于类似大小的种子和谷物的艺术方法。