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Model-based Neural Network Algorithm for Coffee Ripeness Prediction using Helios UAV aerial images

机译:基于模型的神经网络算法用于Helios无人机航拍图像的咖啡成熟度预测

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Over the past few years, NASA has had a great interest in exploring the feasibility of using Unmanned Aerial Vehicles (UAVs), equipped with multi-spectral imaging systems, as long-duration platform for crop monitoring. To address the problem of predicting the ripeness level of the Kauai coffee plantation field using UAV aerial images, we proposed a neural network algorithm based on a nested Leaf-Canopy radiative transport Model (LCM2). A model-based, multi-layer neural network using backpropagation has been designed and trained to learn the functional relationship between the airborne reflectance and the percentage of ripe, over-ripe and under-ripe cherries present in the field. LCM2 was used to generate samples of the desired map. Post-processing analysis and tests on synthetic coffee field data showed that the network has accurately learn the map. A new Domain Projection Technique (DPT) was developed to deal with situations where the measured reflectance fell outside the training set. DPT projected the reflectance into the domain forcing the network to provide a physical solution. Tests were conducted to estimate the error bound. The synergistic combination of neural network algorithms and DPT lays at the core of a more complex algorithm designed to process UAV images. The application of the algorithm to real airborne images shows predictions consistent with post-harvesting data and highlights the potential of the overall methodology.
机译:在过去的几年中,NASA对探索使用配备有多光谱成像系统的无人飞行器(UAV)作为作物监测的长期平台的可行性非常感兴趣。为了解决使用无人机航拍图像预测考艾岛咖啡种植园成熟度的问题,我们提出了一种基于嵌套叶-辐射辐射传输模型(LCM2)的神经网络算法。已经设计并训练了使用反向传播的基于模型的多层神经网络,以了解机载反射率与该领域中成熟的,成熟的和成熟的樱桃所占百分比之间的功能关系。 LCM2用于生成所需图谱的样本。对合成咖啡场数据进行的后处理分析和测试表明,该网络已准确学习了该地图。开发了一种新的域投影技术(DPT),以处理测得的反射率超出训练范围的情况。 DPT将反射率投影到域中,迫使网络提供物理解决方案。进行测试以估计误差范围。神经网络算法和DPT的协同结合是设计用于处理无人机图像的更复杂算法的核心。该算法在实际机载图像中的应用显示了与收获后数据一致的预测,并突出了整体方法的潜力。

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