Identification and Counting of Sorghum Panicles Using Artificial Intelligence Based Drone Field Phenotyping

M. Mbaye, A. Audebert
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Abstract

One of the most promising and difficult challenges for field phenotyping is accurate and reliable counting of sorghum panicles using drone imagery both from RGB and multispectral cameras. In this paper, we present a hybrid Machine Learning method for sorghum panicle identification and counting.The methodology first consists in building a Machine Learning classifier following the two most used methods in the literature for drone and agriculture applications: Support Vector Machine Learning (SVM) and, Artificial Neural Networks (ANN). The present dataset includes 5300 images, and 60% of the dataset were used for training and 20% for testing and validation. Following the results obtained from these models, image segmentation using super-pixel affinity propagation and k-means clustering was used based on simple linear iterative clustering. With an accuracy of 99%, SVM gave a superior performance also in terms of precision and kappa when compared to the ANN model whose accuracy was 98%. Concerning the SVM, a radial basis kernel was used, and the sigma parameter was kept constant at a value of 5.6 determined analytically.
基于人工智能的高粱穗材田间表型鉴定与计数
利用RGB和多光谱相机的无人机图像对高粱穗进行准确可靠的计数是田间表型研究中最有前途和最困难的挑战之一。本文提出了一种用于高粱穗状花序识别和计数的混合机器学习方法。该方法首先包括根据无人机和农业应用文献中最常用的两种方法构建机器学习分类器:支持向量机器学习(SVM)和人工神经网络(ANN)。目前的数据集包括5300张图像,其中60%用于训练,20%用于测试和验证。根据这些模型得到的结果,在简单线性迭代聚类的基础上,使用超像素亲和传播和k-means聚类进行图像分割。与准确率为98%的ANN模型相比,SVM在精度和kappa方面也具有更高的性能,准确率为99%。支持向量机采用径向基核,sigma参数保持不变,解析确定的值为5.6。
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