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Logistic regression product-unit neural networks for mapping Ridolfia segetum infestations in sunflower crop using multitemporal remote sensed data

机译:使用多时相遥感数据绘制Logistic回归乘积神经网络来绘制向日葵作物中的Ridolfia segetum侵染情况

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摘要

Remote sensing (RS), geographic information systems (GIS), and global positioning systems (GPS) may provide the technologies needed for farmers to maximize the economic and environmental benefits of precision farming. Site-specific weed management (SSWM) is able to minimize the impact of herbicide on environmental quality and arises the necessity of more precise approaches for weed patches determination. Ridolfia segetum is one of the most dominant, competitive and persistent weed in sunflower crops in southern Spain. In this paper, we used aerial imagery taken in mid-May, mid-June and mid-July according to different phenological stages of R. segetum and sunflower to evaluate the potential of evolutionary product-unit neural networks (EPUNNs), logistic regression (LR) and two different combinations of both (logistic regression using product units (LRPU) and logistic regression using initial covariates and product units (LRIPU)) for discriminating R. segetum patches and mapping R. segetum probabilities in sunflower crops on two naturally infested fields. Afterwards, we compared the performance of these methods in every date to two recent classification models (support vector machines (SVM) and logistic model trees (LMT)). The results obtained present the models proposed as powerful tools for weed discrimination, the best performing model (LRIPU) obtaining generalization accuracies of 99.2% and 98.7% in mid-June. Our results suggest that a strategy to implement SSWM is feasible with minima omission and commission errors, and therefore, with a very low probability of not detecting R. segetum patches. The paper proposes the application of a new methodology that, to the best of our knowledge, has not been previously applied in RS, and which obtains better accuracy than more traditional RS classification techniques, such as vegetation indices or spectral angle mapper.
机译:遥感(RS),地理信息系统(GIS)和全球定位系统(GPS)可能为农民提供所需的技术,以最大限度地提高精准农业的经济和环境效益。特定地点的杂草管理(SSWM)能够最大程度地减少除草剂对环境质量的影响,因此有必要采用更精确的方法来确定杂草斑块。 Ridolfia segetum是西班牙南部向日葵作物中最主要,最具竞争力和持久性的杂草之一。在本文中,我们根据景天和向日葵的不同物候阶段,使用了5月中旬,6月中旬和7月中旬拍摄的航空影像,以评估进化产物单位神经网络(EPUNN),逻辑回归( LR)和两者的两种不同组合(使用乘积单位进行逻辑回归(LRPU)和使用初始协变量和乘积单位进行logistic回归(LRIPU))来区分R.segetum斑块并在两个自然出没的田地上绘制向日葵作物中的R.segetum概率。然后,我们将这些方法在每个日期的性能与最近的两个分类模型(支持向量机(SVM)和逻辑模型树(LMT))进行了比较。获得的结果表明,提出的模型可作为强大的杂草鉴别工具,最佳表现模型(LRIPU)在6月中旬获得的泛化准确度分别为99.2%和98.7%。我们的结果表明,实施SSWM的策略在最小的遗漏和佣金错误的情况下是可行的,因此,没有检测到segetum斑块的可能性非常低。据我们所知,本文提出了一种新方法的应用,据我们所知,该方法以前尚未在RS中应用,并且比诸如植被指数或光谱角度映射器等更传统的RS分类技术获得了更高的准确性。

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