Garlic yield monitoring using vegetation indices and texture features derived from UAV multispectral imagery

IF 6.3 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2024-08-01 DOI:10.1016/j.atech.2024.100513
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Abstract

Remote sensing and machine learning are widely used to estimate crop yield. The use of these technologies for yield estimation of bulbous vegetables is challenging because the yield is underground and can't be directly monitored by remote sensing images. Among the bulbous vegetables, garlic (Allium sativum L.) is one of the most widely cultivated in the world. The aim of this study was to develop an accurate and transferable machine learning model to monitor and to estimate garlic yield using unmanned aerial vehicle (UAV) multispectral images. Data were collected over three growing seasons (2021, 2022, and 2023) at four different garlic phenological phases (202, 405, 407, and 409 of BBCH). The random forest (RF) algorithm was used to estimate the garlic yield by comparing two different training feature sets: the vegetation indices (VIs) and the VIs with the addition of the texture features extracted from the UAV images. The most important VIs were selected using the recursive feature elimination algorithm. Two estimation methods were compared: a direct bulb estimation and an indirect bulb estimation using the aboveground biomass as a proxy. To evaluate the transferability of the RF models, two cross-validation strategies were compared: a nested leave-one-fold-out cross-validation (LOFOCV) and a leave-one-year-out cross-validation (LOYOCV). The best performance was achieved by the direct bulb estimation using the LOFOCV strategy. Regarding the transferability of the RF models between years (i.e. LOYOCV), the indirect estimation method showed a higher transferability than the direct estimation method. Finally, the addition of texture features improved the accuracy of the RF models, but in general, their contribution was poor. This study demonstrated that the yield of bulbous vegetables can be accurately estimated by remote sensing, and that UAVs are a suitable tool to provide rapid and reliable support for garlic yield monitoring.

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利用无人机多光谱图像得出的植被指数和纹理特征监测大蒜产量
遥感和机器学习被广泛用于估算作物产量。将这些技术用于球茎蔬菜的产量估算具有挑战性,因为球茎蔬菜的产量在地下,无法通过遥感图像直接监测。在球茎蔬菜中,大蒜(Allium sativum L.)是世界上种植最广泛的蔬菜之一。本研究的目的是开发一种准确且可转移的机器学习模型,利用无人机(UAV)多光谱图像监测和估算大蒜产量。在四个不同的大蒜物候期(BBCH 的 202、405、407 和 409)的三个生长季节(2021、2022 和 2023)收集了数据。通过比较两种不同的训练特征集:植被指数(VIs)和从无人机图像中提取的附加纹理特征的植被指数,使用随机森林(RF)算法估算大蒜产量。使用递归特征消除算法选出了最重要的植被指数。比较了两种估算方法:直接球茎估算和使用地上生物量作为替代物的间接球茎估算。为了评估射频模型的可移植性,比较了两种交叉验证策略:嵌套的留一底交叉验证(LOFOCV)和留一年底交叉验证(LOYOCV)。使用 LOFOCV 策略进行的直接灯泡估计取得了最佳性能。关于射频模型在不同年份之间的可转移性(即 LOYOCV),间接估计法比直接估计法显示出更高的可转移性。最后,纹理特征的加入提高了 RF 模型的准确性,但总体而言,其贡献度较低。这项研究表明,球茎类蔬菜的产量可以通过遥感进行准确估算,无人机是为大蒜产量监测提供快速可靠支持的合适工具。
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