ITAP, Univ. Montpellier, INRAE, Institut Agro-SupAgro, F-34196 Montpellier, France 2 Univ. Bordeaux, IMS UMR 5218, F-33405 Talence, France.
Univ. Bordeaux, IMS UMR 5218, F-33405 Talence, France.
Sensors (Basel). 2020 Aug 5;20(16):4380. doi: 10.3390/s20164380.
This paper proposes to study the potentialities of on-board colour imaging for the in-field detection of a textbook case disease: the grapevine downy mildew. It introduces an algorithmic strategy for the detection of various forms of foliar symptoms on proximal high-resolution images. The proposed strategy is based on structure-colour representations and probabilistic models of grapevine tissues. It operates in three steps: (i) Formulating descriptors to extract the characteristic and discriminating properties of each class. They combine the Local Structure Tensors (LST) with colorimetric statistics calculated in pixel's neighbourhood. (ii) Modelling the statistical distributions of these descriptors in each class. To account for the specific nature of LSTs, the descriptors are mapped in the Log-Euclidean space. In this space, the classes of interest can be modelled with mixtures of multivariate Gaussian distributions. (iii) Assigning each pixel to one of the classes according to its suitability to their models. The decision method is based on a "seed growth segmentation" process. This step exploits statistical criteria derived from the probabilistic model. The resulting processing chain reliably detects downy mildew symptoms and estimates the area of the affected tissues. A leave-one-out cross-validation is conducted on a dataset constituted of a hundred independent images of grapevines affected only by downy mildew and/or abiotic stresses. The proposed method achieves an extensive and accurate recovery of foliar symptoms, with on average, a 83% pixel-wise precision and a 76% pixel-wise recall.
本文旨在研究机载彩色成像在田间检测典型病害——葡萄霜霉病的潜力。文中介绍了一种基于近景高分辨率图像检测各种叶片症状的算法策略。所提出的策略基于组织的结构-颜色表示和概率模型。它分三个步骤进行:(i)制定描述符以提取每个类别的特征和区分属性。它们将局部结构张量(LST)与像素邻域内计算的比色统计数据相结合。(ii)对这些描述符在每个类中的统计分布进行建模。为了说明 LST 的特定性质,描述符被映射到对数欧几里得空间中。在这个空间中,感兴趣的类可以用多元高斯分布的混合物来建模。(iii)根据其对模型的适合程度将每个像素分配到一个类别中。决策方法基于“种子生长分割”过程。该步骤利用从概率模型得出的统计标准。所得到的处理链可靠地检测到霜霉病症状并估计受影响组织的面积。在仅受霜霉病和/或非生物胁迫影响的一百张独立葡萄图像数据集上进行了一次留一交叉验证。所提出的方法能够广泛而准确地恢复叶片症状,平均而言,像素精度达到 83%,像素召回率达到 76%。