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Training instance segmentation neural network with synthetic datasets for crop seed phenotyping

机译:培训实例分割神经网络,具有用于作物种子表型的合成数据集

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In order to train the neural network for plant phenotyping, a sufficient amount of training data must be prepared, which requires time-consuming manual data annotation process that often becomes the limiting step. Here, we show that an instance segmentation neural network aimed to phenotype the barley seed morphology of various cultivars, can be sufficiently trained purely by a synthetically generated dataset. Our attempt is based on the concept of domain randomization, where a large amount of image is generated by randomly orienting the seed object to a virtual canvas. The trained model showed 96% recall and 95% average Precision against the real-world test dataset. We show that our approach is effective also for various crops including rice, lettuce, oat, and wheat. Constructing and utilizing such synthetic data can be a powerful method to alleviate human labor costs for deploying deep learning-based analysis in the agricultural domain. Toda et al. train a neural network algorithm for crop seed segmentation using synthetically generated datasets. The model achieves very high precision and is effective for a variety of seeds like barley, rice, and lettuce. Their approach will reduce human labor costs needed to prepare training datasets for similar algorithms for agricultural applications.
机译:为了训练植物表型的神经网络,必须准备足够量的训练数据,这需要耗时的手动数据注释过程,这些注释过程通常成为限制步骤。在这里,我们表明,旨在表型各种品种的大麦种子形态的实例分割神经网络可以纯粹通过合成产生的数据集足够地训练。我们的尝试基于域随机化的概念,其中通过将种子对象随机定向到虚拟画布来生成大量图像。训练有素的模型显示出96%的召回和95%的平均精度对现实世界测试数据集。我们表明我们的方法也有效地为各种作物,包括米饭,生菜,燕麦和小麦。构建和利用这种合成数据可以是减轻在农业领域部署基于深度学习的分析的人力劳动力成本的强大方法。 Toda等人。用综合生成数据集训练作物种子分割的神经网络算法。该模型达到了非常高的精度,对大麦,稻米和生菜等各种种子有效。他们的方法将降低人工人工成本,以便为农业应用程序制备类似算法的培训数据集。

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