首页> 外文会议>Soft Computing and Pattern Recognition, 2009. SOCPAR '09 >Investigation on Image Processing Techniques for Diagnosing Paddy Diseases
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Investigation on Image Processing Techniques for Diagnosing Paddy Diseases

机译:诊断水稻疾病的图像处理技术研究

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The main objective of this research is to develop a prototype system for diagnosing paddy diseases, which are Blast Disease (BD), Brown-Spot Disease (BSD), and Narrow Brown-Spot Disease (NBSD). This paper concentrates on extracting paddy features through off-line image. The methodology involves image acquisition, converting the RGB images into a binary image using automatic thresholding based on local entropy threshold and Otsu method. A morphological algorithm is used to remove noises by using region filling technique. Then, the image characteristics consisting of lesion type, boundary colour, spot colour, and broken paddy leaf colour are extracted from paddy leaf images. Consequently, by employing production rule technique, the paddy diseases are recognized about 94.7 percent of accuracy rates. This prototype has a very great potential to be further improved in the future.
机译:这项研究的主要目的是开发一种用于诊断稻瘟病的原型系统,这些疾病包括稻瘟病(BD),褐斑病(BSD)和窄褐斑病(NBSD)。本文着重于通过离线图像提取稻田特征。该方法涉及图像采集,使用基于局部熵阈值和Otsu方法的自动阈值处理将RGB图像转换为二进制图像。使用形态学算法通过区域填充技术去除噪声。然后,从稻叶图像中提取出由病变类型,边界色,专色和稻叶色组成的图像特征。因此,通过采用生产规则技术,水稻病的准确率约为94.7%。该原型具有很大的潜力,将来有待进一步改进。

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