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An Automatic Plant Disease Symptom Segmentation Concept Based on Pathological Analogy

机译:基于病理类比的植物病害症状自动分割概念

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This paper proposes an automatic disease symptom segmentation algorithm using a simple pathological pattern recognition concept to segment plant disease visual symptoms on digital leaf images. The novelty of the algorithm is in the use of pathological analogy of diseases caused by pathogens, distinct homogeneous patterns relative to the disease progression, to segment individual images into symptomatic, necrotic, and blurred regions. Applying the pathological concept allow for actual disease lesion areas to be quantized in accordance with their true analogy. As a result, individual pattern characteristics of each lesion along the leaf surface can be tracked and features can later be extracted for characterization using machine learning. By employing the concept, the proposed algorithm applies a fusion of simple color space manipulation HSV and CIElab with deltaE (ΔE) color relativity equation to compute each lesion type pixels color. The obtained results are encouraging, successfully localizing and quantifying individual disease lesions. This also indicates the applicability of the proposed approach in discriminating plant diseases based on their analogical dissimilarity. Moreover, it provides opportunities for early identification and detection of fine changes in plant growth, disease stage and severity estimation to assisting crop diagnostics in precision agriculture.
机译:本文提出了一种使用简单病理模式识别概念的疾病症状自动分割算法,用于在数字叶片图像上分割植物疾病的视觉症状。该算法的新颖性在于使用由病原体引起的疾病的病理类比,相对于疾病进展的独特均质模式,将单个图像分割为有症状,坏死和模糊的区域。运用病理学概念,可以根据真实的病灶部位对真实的病灶部位进行量化。结果,可以跟踪沿叶片表面的每个病灶的单个图案特征,并随后可以使用机器学习提取特征以进行表征。通过采用该概念,所提出的算法将简单的颜色空间操作HSV和CIElab与deltaE(ΔE)颜色相关性方程式融合,以计算每种病变类型像素的颜色。获得的结果令人鼓舞,成功地定位和量化了单个疾病的病变。这也表明了拟议方法在基于类比差异鉴别植物病害方面的适用性。此外,它为早期发现和检测植物生长,病期和病情严重程度的细微变化提供了机会,以协助精准农业中的作物诊断。

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