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Oil Palm Detection via Deep Transfer Learning

机译:通过深度转移学习进行油棕检测

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This article presents an intelligent system using deep learning algorithms and the transfer learning approach to detect oil palm units in multispectral photographs taken with unmanned aerial vehicles. Two main contributions come from this piece of research. First, a dataset for oil palm units detection is carefully produced and made available online. Although being tailored to the palm detection problem, the latter has general validity and can be used for any classification application. Second, we designed and evaluated a state-of-the-art detection system, which uses a convolutional neural network to extract meaningful features, and a classifier trained with the images from the proposed dataset. Results show outstanding effectiveness with an accuracy peak of 99.5% and a precision of 99.8%. Using different images for validation taken from different altitudes the model reached an accuracy of 97.5% and a precision of 98.3%. Hence, the proposed approach is highly applicable in the field of precision agriculture.
机译:本文介绍了一种使用深度学习算法和传递学习方法的智能系统,可以检测无人飞行器拍摄的多光谱照片中的油棕单元。这项研究有两个主要贡献。首先,精心制作了用于检测油棕树单位的数据集,并使其联机可用。尽管针对手掌检测问题进行了量身定制,但后者具有一般有效性,可以用于任何分类应用程序。其次,我们设计和评估了一个先进的检测系统,该系统使用卷积神经网络提取有意义的特征,并使用分类器对拟议的数据集中的图像进行训练。结果显示出卓越的有效性,其准确度峰值为99.5%,准确度为99.8%。使用不同的图像进行不同高度的验证,该模型的准确度达到了97.5%,准确度达到了98.3%。因此,所提出的方法在精密农业领域具有很高的适用性。

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