Generating images of hydrated pollen grains using deep learning

J. Grant-Jacob, M. Praeger, R. Eason, B. Mills
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引用次数: 3

Abstract

Pollen grains dehydrate during their development and following their departure from the host stigma. Since the size and shape of a pollen grain can be dependent on environmental conditions, being able to predict both of these factors for hydrated pollen grains from their dehydrated state could be beneficial in the fields of climate science, agriculture, and palynology. Here, we use deep learning to transform images of dehydrated Ranunculus pollen grains into images of hydrated Ranunculus pollen grains. We also then use a deep learning neural network that was trained on experimental images of different genera of pollen grains to identify the hydrated pollen grains from the generated transformed images, to test the accuracy of the image generation neural network. This pilot work demonstrates the first steps needed towards creating a general deep learning-based rehydration model that could be useful in understanding and predicting pollen morphology.
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使用深度学习生成水合花粉粒的图像
花粉粒在发育过程中以及离开寄主柱头后会脱水。由于花粉粒的大小和形状可能取决于环境条件,因此能够从脱水状态预测水合花粉粒的这两个因素在气候科学、农业和孢粉学领域都是有益的。在这里,我们使用深度学习将脱水毛茛花粉粒的图像转换为水合毛茛花粉粒的图像。然后,我们还使用在不同属花粉粒的实验图像上训练的深度学习神经网络,从生成的转换图像中识别水合花粉粒,以测试图像生成神经网络的准确性。这项试点工作展示了创建一个基于深度学习的通用再水合模型所需的第一步,该模型可能有助于理解和预测花粉形态。
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