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DeepWheat: Estimating Phenotypic Traits from Crop Images with Deep Learning

机译:DeepWheat:通过深度学习估计作物图像的表型特征

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In this paper, we investigate estimating emergence and biomass traits from color images and elevation maps of wheat field plots. We employ a state-of-the-art deconvolutional network for segmentation and convolutional architectures, with residual and Inception-like layers, to estimate traits via high dimensional nonlinear regression. Evaluation was performed on two different species of wheat, grown in field plots for an experimental plant breeding study. Our framework achieves satisfactory performance with mean and standard deviation of absolute difference of 1.05 and 1.40 counts for emergence and 1.45 and 2.05 for biomass estimation. Our results for counting wheat plants from field images are better than the accuracy reported for the similar, but arguably less difficult, task of counting leaves from indoor images of rosette plants. Our results for biomass estimation, even with a very small dataset, improve upon all previously proposed approaches in the literature.
机译:在本文中,我们调查了从小麦田地彩色图像和高程图估计出苗和生物量性状。我们使用最先进的反卷积网络进行分割和卷积架构,并具有残差层和类似Inception的层,以通过高维非线性回归来估计特征。对在田间地块上种植的两种不同小麦进行了评估,以进行实验性植物育种研究。我们的框架实现了令人满意的性能,平均和标准差的绝对差分别为1.05和1.40计数(出苗)和1.45和2.05(生物量估算)。我们从野外图像中计算出的小麦植物的结果要好于报道的类似结果,但其难度可能要低一些,但是从玫瑰花植物的室内图像中计算出的叶子的结果却要困难得多。即使对于非常小的数据集,我们的生物量估计结果也可以改善文献中所有先前提出的方法。

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