Algorithm to Estimate Sorghum Grain Number from Panicles Using Images Collected with a Smartphone at Field-Scale

G. N. Santiago, A. Carcedo, L. Marziotte, I. Ciampitti
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Abstract

Summary An estimation of on-farm yield before harvest is important to help farmers make decisions about additional input use, time to harvest, and options for end uses of the harvestable product. However, obtaining a rapid assessment of on-farm yield can be challenging, especially for a sorghum ( Sorghum bicolor L.) crop due to the complexity of counting the total number of grains in a panicle at field-scale. One alternative to reduce labor is to develop a rapid assessment method employing computer vision algorithms. Computer vision has already been utilized to account for the number of grains within a panicle, yet it has only been tested under controlled conditions. The objective of this study was to estimate the number of grains in a sorghum panicle using imagery data captured from a smartphone device at field-scale. During the pre-harvest season, sorghum panicles of several commercial hybrids were photographed in the field. Later, the plants corresponding to those panicles were harvested to determine the final number of grains, to develop a benchmarking dataset. Using Python language and the OpenCV library, each image was filtered, blurred, and contours were applied to estimate the number of grains in each sorghum panicle. The absolute mean difference obtained using the algorithm output for the observed and the estimated number of grains was 570 (root mean square percentage error = 53%).
利用智能手机在农田尺度上采集的图像估计高粱穗粒数的算法
收获前对农场产量的估计对于帮助农民决定额外投入的使用、收获时间和可收获产品的最终用途非常重要。然而,获得农场产量的快速评估可能具有挑战性,特别是对于高粱(sorghum bicolor L.)作物,由于在田间规模上计算穗粒总数的复杂性。减少劳动力的一种替代方法是开发一种使用计算机视觉算法的快速评估方法。计算机视觉已经被用于计算穗内的粒数,但它只在受控条件下进行了测试。本研究的目的是利用智能手机设备在田间尺度上捕获的图像数据估计高粱穗上的粒数。在收获前季节,对几种商业杂交高粱的穗部进行了实地拍摄。随后,与这些穗相对应的植物被收获,以确定最终的籽粒数量,以建立基准数据集。使用Python语言和OpenCV库,对每张图像进行滤波、模糊,并应用轮廓来估计每个高粱穗的粒数。使用算法输出得到的观测颗粒数与估计颗粒数的绝对平均差为570(均方根百分比误差= 53%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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