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A multi-objective neural network based method for cover crop identification from remote sensed data

机译:基于多目标神经网络的遥感数据覆盖作物识别方法

摘要

One of the objectives of conservation agriculture to reduce soil erosion in olive orchards is to protect the soil with cover crops between rows. Andalusian and European administrations have developed regulations to subsidise the establishment of cover crops between rows in olive orchards. Current methods to follow-up the cover crops systems by administrations consist of sampling and on ground visits of around 1% of the total olive orchards surface at any time from March to late June. This paper outlines a multi-objective neural network based method for the classification of olive trees (OT), bare soil (BS) and different cover crops (CC), using remote sensing data taken in spring and summer. The main findings of this paper are: (1) the proposed models performed well in all seasons (particularly during the summer, where only 48 pixels of CC are confused with BS and 10 of BS with CC with the best model obtained. This model obtained a 97.80% of global classification, 95.20% in the class with the worst classification rate and 0.9710 in the KAPPA statistics), and (2) the best-performing models could potentially decrease the number of complaints made to the Andalusian and European administrations. The complaints in question concern the poor performance of current on-ground methods to address the presence or absence of cover crops in olive orchards. © 2012 Elsevier Ltd. All rights reserved.
机译:保护性农业减少橄榄果园水土流失的目的之一是用两行之间的覆盖作物保护土壤。安达卢西亚和欧洲主管部门制定了法规,以补贴在橄榄园中两行之间种植有盖作物。主管部门对覆盖作物系统采取后续行动的当前方法包括在3月至6月下旬的任何时间进行采样并实地考察橄榄园总表层的大约1%。本文概述了一种基于多目标神经网络的方法,该方法利用春季和夏季的遥感数据对橄榄树(OT),裸土(BS)和不同覆盖作物(CC)进行分类。本文的主要发现是:(1)所提出的模型在所有季节都表现良好(尤其是在夏季,只有48个CC像​​素与BS混淆,而10个BS与CC混淆,获得了最佳模型)。占全球分类的97.80%,分类率最差的类别为95.20%,KAPPA统计数据为0.9710),(2)表现最佳的模型可能会减少对安达卢西亚和欧洲政府的投诉数量。有争议的投诉涉及解决橄榄园中是否存在有盖作物的当前地面方法的不良表现。 ©2012 ElsevierLtd。保留所有权利。

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