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CANOPY PRUNING GRADE CLASSIFICATION BASED ON FAST FOURIER TRANSFORM AND ARTIFICIAL NEURAL NETWORK

机译:基于快速傅里叶变换和人工神经网络的冠层修剪等级分类

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摘要

Canopy architecture optimization and pruning management are agricultural operations crucial for plant growth and fruit production. Classifying pruning grade and optimizing the tree canopy accordingly are essential for these operations. If the work is done properly, it can result in higher yields of quality fruit. In this article, we present a method utilizing fast Fourier transform (FFT) and a back-propagation artificial neural network (BP-ANN) to classify, different pruning grades in cherry orchards with an upright fruiting offshoots (UFO) training system to illustrate our approach. The approach was implemented automatically by first using a discrete FFT to extract frequency information from images of a cherry tree canopy and then applying a band filter to digitize the 2D FFT spectrum to a 1D array. A BP-ANN model was then used to classify the pruning grade of the trees. By combining image processing and ANN-based classification techniques, our approach was resilient to details, such as specific leaf shapes and leaf vein structure, and achieved an accuracy rate of over 80% in classifying pruning grades for UFO cherry trees with respect to human expert grading. Principal component analysis (PCA) was also applied to simplify the prediction model complexity while maintaining a similar prediction accuracy rate with a much less complicated input data set. Experimental results showed that our method could provide real-time classification of pruning grades for UFO cherry trees with reasonable prediction accuracy
机译:冠层结构优化和修剪管理是农业运营对于植物生长和水果生产至关重要。对修剪等级进行分类并相应地优化树冠对于这些操作至关重要。如果工作正确完成,则可以提高优质水果的产量。在本文中,我们提出了一种利用快速傅立叶变换(FFT)和反向传播人工神经网络(BP-ANN)对樱桃园中不同修剪等级进行分类的方法,并采用直立的果枝(UFO)训练系统来说明我们方法。该方法是通过首先使用离散FFT从樱桃树冠图像中提取频率信息,然后应用频带滤波器将2D FFT频谱数字化到1D数组来自动实现的。然后使用BP-ANN模型对树木的修剪等级进行分类。通过将图像处理和基于ANN的分类技术相结合,我们的方法对细节(例如特定的叶片形状和叶脉结构)具有弹性,并且在对UFO樱桃树的修剪等级进行分类时,相对于人类专家而言,其准确率超过80%等级。还使用主成分分析(PCA)简化了预测模型的复杂性,同时使用不太复杂的输入数据集来维持相似的预测准确率。实验结果表明,该方法可以对不明飞行物樱桃树的修剪等级进行实时分类,并具有合理的预测精度。

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