Regression based algorithms for predicting age of an Arabidopsis plant

Karim Panjvani, A. Dinh, K. Wahid, P. Bhowmik
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Abstract

This paper presents the analysis of various regression based machine learning algorithms for image-based plant phenotyping application and proposes a technique for plant phenotyping. Capability to predict age/development stage of a plant is one of the important factors for plant phenotyping and for analysis of in-situ crops. With the developed technique, these algorithms can predict age of an Arabidopsis plant based on the given images and mutant types. Publicly available dataset containing 165 images at different development stages and with various mutant types was used for this experiment. Results show that with this technique and different regression algorithms, it can achieve 92% prediction accuracy. Comparatively, linear regression algorithms show greater prediction accuracy than nonlinear algorithms. This method of age prediction can help plant scientists and breeders for better analysis of crops.
预测拟南芥植株年龄的回归算法
本文分析了各种基于回归的机器学习算法在基于图像的植物表型分析中的应用,并提出了一种植物表型分析技术。预测植物年龄/发育阶段的能力是植物表型分析和原位作物分析的重要因素之一。利用所开发的技术,这些算法可以根据给定的图像和突变类型预测拟南芥植物的年龄。公开数据集包含165张不同发育阶段和不同突变类型的图像,用于本实验。结果表明,该方法与不同的回归算法相结合,预测准确率可达92%。相比之下,线性回归算法的预测精度要高于非线性回归算法。这种年龄预测方法可以帮助植物科学家和育种家更好地分析作物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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