Survey on Identify the Agricultural Diseases Using Image Processing and Soft Computing Techniques

Athira ja, Prof.K. Geetha, S. Arulraj, N. Megala, Prasa na
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引用次数: 0

Abstract

The agricultural land mass is more than just being a feeding sourcing in today’s world. Agriculture productivity defines the economy of India in a great manner. So, in plants, disease detection plays a vital role in agriculture field. Automatic disease detection approaches are used for detecting plant diseases during the initial stages. To identify the agricultural diseases using digital image based on various features like color, textures and shape. Research firm currently doing a research to detect and diagnosis agricultural diseases based on digital image. This survey provides a better understanding of the soft computing techniques and image processing used for researcher and farmers to identify the agricultural diseases. This survey highlights several diseases of agricultural plants like rice, apple, cucumber, graphs, banana, cherry, wheat and sugarcane. And also this analysis work provides the comparison analysis of different research techniques in terms of their merits and demerits along with numerical analysis.
利用图像处理和软计算技术识别农业病害的研究进展
在当今世界,农业用地不仅仅是一个食物来源。农业生产力在很大程度上决定了印度的经济。因此,植物病害检测在农业生产中起着至关重要的作用。自动病害检测方法用于植物病害的早期检测。利用基于颜色、纹理、形状等特征的数字图像对农业病害进行识别。研究公司目前正在进行一项基于数字图像的农业病害检测和诊断的研究。这项调查提供了一个更好的理解软计算技术和图像处理用于研究人员和农民识别农业疾病。这项调查强调了水稻、苹果、黄瓜、无花果、香蕉、樱桃、小麦和甘蔗等农业植物的几种病害。并结合数值分析对不同研究方法的优缺点进行了比较分析。
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来源期刊
Alinteri Journal of Agriculture Sciences
Alinteri Journal of Agriculture Sciences AGRICULTURE, MULTIDISCIPLINARY-
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