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Vineyard yield estimation by combining remote sensing, computer vision and artificial neural network techniques

机译:遥感,计算机视觉和人工神经网络技术结合葡萄园产量估算

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In viticulture, it is critical to predict productivity levels of the different vineyard zones to undertake appropriate cropping practices. To overcome this challenge, the final yield was predicted by combining vegetation indices (VIs) to sense the health status of the crop and by computer vision to obtain the vegetated fraction cover (F-c) as a measure of plant vigour. Multispectral imagery obtained from an unmanned aerial vehicle (UAV) is used to obtain VIs and F-c, which are used together with artificial neural networks (ANN) to model the relationship between VIs, F-c and yield. The proposed methodology was applied in a vineyard, where different irrigation and fertilisation doses were applied. The results showed that using computer vision techniques to differentiate between canopy and soil is necessary in precision viticulture to obtain accurate results. In addition, the combination of VIs (reflectance approach) and F-c (geometric approach) to predict vineyard yield results in higher accuracy (root mean square error (RMSE) = 0.9 kg vine(-1) and relative error (RE) = 21.8% for the image when close to harvest) compared to the simple use of VIs (RMSE = 1.2 kg vine(-1) and RE = 28.7%). The implementation of machine learning techniques resulted in much more accurate results than linear models (RMSE = 0.5 kg vine(-1) and RE = 12.1%). More precise yield predictions were obtained when images were taken close to the harvest date, although promising results were obtained at earlier stages. Given the perennial nature of grapevines and the multiple environmental and endogenous factors determining yield, seasonal calibration for yield prediction is required.
机译:在葡萄栽培中,预测不同葡萄园区域的生产率水平至关重要,以进行适当的种植实践。为了克服这一挑战,通过将植被指数(VI)组合来感知作物的健康状况以及计算机视觉来预测最终产量,以获得植被分数覆盖(F-C)作为植物活力的衡量标准。从无人驾驶飞行器(UAV)获得的多光谱图像用于获得VI和F-C,其与人工神经网络(ANN)一起使用,以模拟VI,F-C和产量之间的关系。所提出的方法应用于葡萄园,其中应用了不同的灌溉剂量。结果表明,在精确的葡萄栽培中,使用计算机视觉技术区分树冠和土壤是必要的,以获得准确的结果。此外,VIS(反射方法)和FC(几何方法)的组合预测葡萄园产量导致更高的精度(根均线误差(RMSE)= 0.9kg vine(-1)和相对误差(RE)= 21.8%与收获接近时的图像)与VIS的简单使用相比(RMSE = 1.2 kg vine(-1)和重新= 28.7%)。机器学习技术的实施导致比线性模型更准确的结果(RMSE = 0.5 kg vine(-1)和重新= 12.1%)。尽管在早期的阶段获得了有希望的结果,但在接近收获日期时获得更精确的产量预测。鉴于葡萄树的常年性质和多个环境和内源性因素确定产量,需要季节性校准的产量预测。

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