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Superpixels and Graph Convolutional Neural Networks for Efficient Detection of Nutrient Deficiency Stress from Aerial Imagery

机译:超像性和图形卷积神经网络,用于高效检测空中图像的营养缺乏压力

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Advances in remote sensing technology have led to the capture of massive amounts of data. Increased image resolution, more frequent revisit times, and additional spectral channels have created an explosion in the amount of data that is available to provide analyses and intelligence across domains, including agriculture. However, the processing of this data comes with a cost in terms of computation time and money, both of which must be considered when the goal of an algorithm is to provide real-time intelligence to improve efficiencies. Specifically, we seek to identify nutrient deficient areas from remotely sensed data to alert farmers to regions that require attention; detection of nutrient deficient areas is a key task in precision agriculture as farmers must quickly respond to struggling areas to protect their harvests. Past methods have focused on pixel-level classification (i.e. semantic segmentation) of the field to achieve these tasks, often using deep learning models with tens-of-millions of parameters. In contrast, we propose a much lighter graph-based method to perform node-based classification. We first use Simple Linear Iterative Cluster (SLIC) to produce superpixels across the field. Then, to perform segmentation across the non-Euclidean domain of superpixels, we lever-age a Graph Convolutional Neural Network (GCN). This model has 4-orders-of-magnitude fewer parameters than a CNN model and trains in a matter of minutes.
机译:遥感技术的进步导致捕获大量数据。增加的图像分辨率,更频繁的重访时间和额外的光谱通道在数据的数据量中创造了一种爆炸,这些数据可以在包括农业的域中提供分析和智能。然而,该数据的处理在计算时间和金钱方面具有成本,这两者都必须考虑到算法的目标是提供实时智能以提高效率。具体而言,我们寻求从远程感测数据中识别营养不足区域,以提醒农民到需要注意的地区;检测营养缺陷面积是精密农业的关键任务,因为农民必须迅速应对努力保护其收获的努力。过去的方法专注于该领域的像素级分类(即语义分割)以实现这些任务,通常使用具有数百万个参数的深度学习模型。相比之下,我们提出了一种基于较轻的基于图形的方法来执行基于节点的分类。我们首先使用简单的线性迭代簇(SLIC)来在整个场上生产超像素。然后,为了在超像素的非欧几里德域进行分割,我们可以使用图形卷积神经网络(GCN)。此模型具有比CNN模型更少的参数,而在几分钟内具有4个参数。

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