Monitoring seed maturity is an increasing challenge in agriculture due to climate change and more restrictive practices. Seeds monitoring in the field is essential to optimize the farming process and to guarantee yield quality through high germination. Traditional methods are based on limited sampling in the field and analysis in laboratory. Moreover, they are time consuming and only allow monitoring sub-sections of the crop field. This leads to a lack of accuracy on the condition of the crop as a whole due to intra-field heterogeneities. Multispectral imagery by UAV allows uniform scan of fields and better capture of crop maturity information. On the other hand, deep learning methods have shown tremendous potential in estimating agronomic parameters, especially maturity. However, they require large labeled datasets. Although large sets of aerial images are available, labeling them with ground truth is a tedious, if not impossible task. In this paper, we propose a method for estimating parsley seed maturity using multispectral UAV imagery, with a new approach for automatic data labeling. This approach is based on parametric and non-parametric models to provide weak labels. We also consider the data acquisition protocol and the performance evaluation of the different steps of the method. Results show good performance, and the non-parametric kernel density estimator model can improve neural network generalization when used as a labeling method, leading to more robust and better performing deep neural models.
翻译:由于气候变化和更具限制性的做法,监测种子成熟度对农业是一项越来越大的挑战。实地的种子监测对于优化耕作过程和通过高发质保证产量质量至关重要。传统方法以有限的实地抽样和实验室分析为基础。此外,这些方法耗费时间,只允许监测作物田的分块。这导致整个作物状况的准确性因实地差异性而提高。UAV提供的多光谱图像允许对田地进行统一扫描和更好地捕捉作物成熟度信息。另一方面,深层次学习方法在估计农艺参数方面显示出巨大的潜力,特别是成熟度。然而,它们需要大量贴标签的数据集。虽然有大量的航空图像可供使用,但将其贴上地面真相标签是一件烦琐的工作,即使不是不可能做到。在本文件中,我们提出了一个方法,用多光谱UAV图像来估计鹦鹉种子成熟度的成熟度,并采用新的自动数据标识方法。这种方法基于参数和非参数模型,以提供较弱的标签。我们还认为,数据获取模型的深度和不成熟度模型可以提供较强的标签。我们还认为,在采用不同的方法时,在采用更稳度的模型时,以更稳度的方式进行测测测测度的模型时,可以显示测度方法的进度的进度的进度,可以显示。