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Field-based Robotic Phenotyping for Sorghum Biomass Yield Component Traits Characterization Using Stereo Vision

机译:基于现场的高粱生物量产量组分特征使用立体视觉的基于现场的机器人表型

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Sorghum is known as a major potential feedstock for biofuel production. Being able to efficiently discover genetic control of many traits over a large number of genotypes, genome-wide association study (GWAS) has become a powerful tool for studying sorghum biomass yield components. However, automated high-throughput field-based plant phenotyping is now the bottleneck for scaling up such experiments. This paper presents an auto-guidance enabled utility tractor which navigates itself between crop rows with a predefined path while collecting stereo images of sorghum samples from both sides of the vehicle. Three levels of stereo camera heads were instrumented to capture images of plants up to 3 meters tall. The stereo images were processed offline to reconstruct 3D point clouds using Semi-Global Block Matching. A semi-automated software interface was developed to measure stem diameter due to the strict sampling strategy and the complexity of high-density crop canopy. An automated hedge-based feature extraction pipeline was proposed to quantify other variations in plant architecture traits such as plant height, leaf area index (LAI) and vegetation volume index (VVI). The stem diameter measured using the semi-automatic method showed high correlation (0.958) to hand measurement.
机译:高粱被称为生物燃料生产的主要潜在原料。能够在大量基因型中有效地发现许多性状的遗传控制,基因组 - 范围的协会研究(GWAs)已成为研究高粱生物质产量组分的强大工具。然而,自动化的基于高吞吐量的植物表型表型现在是扩大此类实验的瓶颈。本文介绍了一种自动指导的公用事业拖拉机,该拖拉机用预定义路径在裁剪行之间导航自身,同时从车辆的两侧收集高粱样品的立体图像。有三个层次的立体声相机头被称为捕获高达3米的植物的图像。将立体图像脱机,以使用半全局块匹配重建3D点云。由于严格的采样策略和高密度作物树冠的复杂性,开发了一个半自动软件界面以测量阀门直径。提出了一种自动对冲的特征提取管道,以量化植物高度,叶面积指数(LAI)和植被体积指数(VVI)等植物架构特征的其他变化。使用半自动方法测量的杆直径显示出高相关(0.958)以手测量。

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