首页> 外文期刊>British Journal of Mathematics Computer Science >Statistical Texture and Normalized Discrete CosineTransform-Based Automatic Soya Plant Foliar InfectionCataloguing
【24h】

Statistical Texture and Normalized Discrete CosineTransform-Based Automatic Soya Plant Foliar InfectionCataloguing

机译:基于统计纹理和归一化离散余弦变换的自动大豆叶面感染

获取原文
           

摘要

Soya beans are an important cash-crop, grown worldwide because of their use as a raw material in various industries involved in the production of sauces, mayonnaises, chocolates, baby-food, bakery, etc. Soya bean products are not only consumed by humans, but by pets too. They are also used as an alternative to fossil fuel in the form of bio-diesel. The research work presented in this paper highlights the problems associated with soya bean cultivation, and the reasons for yield loss in developing countries like India, China and others. In this paper, the colour image sensing and processing based infected lesion detection method is proposed. Structural texture and normalized DCT-based feature descriptors for refined lesion histograms have been developed. Hybrid feature descriptors have been used as the input samples for four major soya plant foliar infections. The classification and testing accuracies are quite encouraging, and are above 89.9% and 92.3% respectively. Also, the results have been compared for only ST, ST-DCT, and ST-NDCT feature-based methods, and the use of ST-NDCT descriptors in cataloguing systems is suggested. Moreover, the method can classify four diseases, which creates confusion because of similar colour shades, and irregular and random shapes and sizes of lesions.
机译:大豆是一种重要的经济作物,由于在各种调味料,蛋黄酱,巧克力,婴儿食品,烘焙食品等生产行业中用作原料而在世界范围内种植。大豆产品不仅为人类食用,但也可以养宠物。它们还以生物柴油的形式用作化石燃料的替代品。本文提出的研究工作着重指出了与大豆种植相关的问题,以及印度,中国等发展中国家的产量下降的原因。本文提出了一种基于彩色图像传感与处理的感染病灶检测方法。已经开发出了用于精细病变直方图的结构纹理和基于归一化DCT的特征描述符。混合特征描述符已被用作四种主要大豆植物叶感染的输入样本。分类和测试的准确性令人鼓舞,分别高于89.9%和92.3%。另外,仅对基于ST,ST-DCT和ST-NDCT特征的方法的结果进行了比较,建议在编目系统中使用ST-NDCT描述符。此外,该方法可以对四种疾病进行分类,由于相似的色度以及不规则和随机的病变形状和大小,会造成混淆。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号