植物叶片数字照片中不同特征提取的疾病症状自动分割优化

A. M. Abdu, Musa Mohd Mokji, U. U. Sheikh, K. Khalil
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引用次数: 10

摘要

植物叶片图像中病变症状区域的分割是机器学习应用于植物病害检测的关键阶段。这个过程也被称为感兴趣区域(ROI)分割,包括将纯颜色变异症状病变从周围的绿色组织中分离出来,然后从中提取判别特征。然而,调查表明,在分割的ROI中无法捕获从开始到表现的疾病症状进展的生动解剖,通过这种解剖可以培养更精细的疾病表征差异特征。此外,典型的ROI分割过程经常受到各种挑战的困扰,从图像捕获条件等内在因素到疾病解剖等外在因素,其中症状逐渐消失为健康的绿色组织,分离边界变得难以捉摸。这将进一步增加流程的复杂性或产生错误的结果。本研究提出了一种自动扩展感兴趣区域(EROI)分割,通过使用颜色均匀性阈值扩展边界区域来覆盖健康组织的某些部分,从而纳入症状进展信息。为了产生一个基本事实,在一个著名的PlantVillage数据集上实现了典型的ROI分割和减少的ROI,从中提取了单独的纹理和颜色特征并用于构建线性分类器。通过对分类结果的比较,进一步验证了本文方法在差异性特征提取方面的优势。通过本研究,可以提取更精细的表征特征,用于植物病害的分类和严重程度估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Disease Symptoms Segmentation Optimized for Dissimilarity Feature Extraction in Digital Photographs of Plant Leaves
Segmentation of diseased symptom regions in images of plant leaves is a crucial stage in the application of machine learning for plant diseases detection. This process also known as Region of Interest (ROI) segmentation involves separating purely color variant symptom lesions from surrounding green tissue from which discriminant features are later extracted. However, investigations have shown that vivid anatomy of a disease symptom progression right from inception to manifestation through which finer disease characterization dissimilarity features can be fostered are not captured in a segmented ROI. Furthermore, the typical ROI segmentation process is often plagued by challenges ranging from intrinsic factors such as image capture conditions to extrinsic factors such as disease anatomy where symptoms fade into healthy green tissue the separation boundary to become impalpable. This adds further complexity to the process or produce erroneous result. This research proposes an automatic extended region of interest (EROI) segmentation to incorporate symptom progression information by extending the border region to cover some part of healthy tissue using color homogeneity thresholding. To produce a ground truth, the typical ROI segmentation alongside a reduced ROI were implemented on a well-known PlantVillage dataset from which separate textural and color features were extracted and used to build a linear classifier. A comparison between the classification results further reinforced the advantages of the proposed approach for dissimilarity features extraction. Through this research, finer characterization features can be extracted for the classification and severity estimation of plant diseases.
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