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首页> 外文期刊>Frontiers in Plant Science >Doing More With Less: A Multitask Deep Learning Approach in Plant Phenotyping
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Doing More With Less: A Multitask Deep Learning Approach in Plant Phenotyping

机译:较少的植物表单型多任务深入学习方法

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Image-based plant phenotyping has been steadily growing and this has steeply increased the need for more efficient image analysis techniques capable of evaluating multiple plant traits. Deep learning has shown its potential in a multitude of visual tasks in plant phenotyping, such as segmentation and counting. Here, we show how different phenotyping traits can be extracted simultaneously from plant images, using multitask learning (MTL). MTL leverages information contained in the training images of related tasks to improve overall generalization and learns models with fewer labels. We present a multitask deep learning framework for plant phenotyping, able to infer three traits simultaneously: (i) leaf count, (ii) projected leaf area (PLA), and (iii) genotype classification. We adopted a modified pretrained ResNet50 as a feature extractor, trained end-to-end to predict multiple traits. We also leverage MTL to show that through learning from more easily obtainable annotations (such as PLA and genotype) we can predict a better leaf count (harder to obtain annotation). We evaluate our findings on several publicly available datasets of top-view images of Arabidopsis thaliana . Experimental results show that the proposed MTL method improves the leaf count mean squared error (MSE) by more than 40%, compared to a single task network on the same dataset. We also show that our MTL framework can be trained with up to 75% fewer leaf count annotations without significantly impacting performance, whereas a single task model shows a steady decline when fewer annotations are available. Code available at https://github.com/andobrescu/Multi_task_plant_phenotyping .
机译:基于图像的植物表型在稳步增长,这急剧增加了对能够评估多种植物性状的更有效的图像分析技术的需要。深度学习已经在植物表型中的众多视力下的视力下表现出其潜力,例如分割和计数。这里,我们示出了如何使用多址学习(MTL)从植物图像同时提取不同的表型特征。 MTL利用相关任务培训图像中包含的信息来改善整体泛化,并使用较少标签学习模型。我们为植物表型提供了一种多任务深层学习框架,能够同时推断出三种性状:(i)叶计数,(ii)投影叶面积(PLA)和(III)基因型分类。我们采用修改后的预读RESET50作为特征提取器,训练的端到端以预测多个特征。我们还利用MTL来表明,通过从更容易获得的注释(例如PLA和基因型)来看,我们可以预测更好的叶子计数(更难获得注释)。我们在拟南芥顶视图的几个公开可用的数据集上评估我们的调查结果。实验结果表明,与同一数据集上的单个任务网络相比,所提出的MTL方法将叶片计数平均误差(MSE)提高了40%以上。我们还表明,我们的MTL框架可以接受培训,叶数注释高达75%,而在没有显着影响性能的情况下,单个任务模型显示较少的注释时显示出稳步下降。在https://github.com/andobrescu/multi_task_plant_phenotyping提供的代码。

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