Leaf Region Segmentation for Plant Leaf Disease Detection using Color Conversion and Flood Filling

N. S, H. S. Devi
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Abstract

Leaves are the primary sources for identifying a healthy plant and identifying many plant diseases. When leaf disease has not been correctly analyzed and early detection is not taken may produce a severe effect on the plants, which results in the loss of yield and quality of the production. Identifying or monitoring the diseases manually requires a tremendous amount of work and a lot of processing time. To overcome this, today, image processing has been widely used to identify conditions in plants to increase production. This paper has proposed a methodology to segment the leaf region using different color space models and flood filling algorithms. This system can be future used to classify the type of leaf disease.
基于颜色转换和泛洪填充的植物叶片区域分割
叶片是识别健康植物和识别许多植物病害的主要来源。当叶片病害没有得到正确的分析和早期发现时,可能会对植株产生严重的影响,从而导致产量和产品质量的损失。手动识别或监测疾病需要大量的工作和大量的处理时间。为了克服这个问题,今天,图像处理已被广泛用于识别植物中的条件以增加产量。本文提出了一种利用不同的色彩空间模型和泛洪填充算法对叶子区域进行分割的方法。该系统可用于分类叶病的类型。
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