高粱图像中穗状花序的检测与计数

P. Olsen, K. Ramamurthy, Javier Ribera, Yuhao Chen, Addie M. Thompson, Ronny Luss, M. Tuinstra, N. Abe
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引用次数: 7

摘要

表型是测量植物性状的过程,在植物育种中起着核心作用。然而,传统的方法是劳动密集型的、耗时的、昂贵的,而且容易出错。准确、自动化、高通量的表型分析可以减轻育种流水线上的巨大负担。在本文中,我们提出了计算机视觉系统和方法来注释,检测和计数穗(头),一个关键的表型,从高粱作物的航空图像。该标注系统允许用户在高粱航拍图像中标注穗。这些标注的数据用于穗检测和计数算法的学习。所提出的方法与在美国中西部6个不同日期收集的18种高粱作物的航空图像一起使用。检测器的AUC大于0.98,计数器不适应品种时的平均绝对误差为2.66,使用品种专用信息时的平均绝对误差为1.88。我们的方法正被用于高通量表型管道,以加速高粱育种。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting and Counting Panicles in Sorghum Images
Phenotyping, the process of measuring plant traits, plays a central role in plant breeding. However, traditional approaches are labor-intensive, time-consuming, costly, and error prone. Accurate, automated, high-throughput phenotyping can relieve a huge burden in the breeding pipeline. In this paper, we propose computer vision systems and approaches to annotate, detect, and count panicles (heads), a key phenotype, from aerial images of Sorghum crops. The annotation system allows the users to label panicles in Sorghum aerial images. This annotated data is used for learning by the panicle detection and counting algorithms. The proposed approaches were used with aerial imagery of 18 varieties of Sorghum crop collected at 6 different dates in the Midwestern United States. The detector has an AUC of over 0.98 and the counter has a mean absolute error of 2.66 without adapting to variety and 1.88 when using variety specific information. Our approaches are being adopted into a high-throughput phenotyping pipeline for accelerating Sorghum breeding.
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