首页> 外文会议>International Conference on Computing Methodologies and Communication >A Brief Review on Methods for Classification of Medical Plant Images
【24h】

A Brief Review on Methods for Classification of Medical Plant Images

机译:医学植物图像分类方法简论

获取原文

摘要

Plants on earth play a significant role both in human and other lives. Plants have the greatest influence in the nature cycle. Plant identification in biology and farming is very demanding, as new plant discoveries and plant computerization are more well established. For a broad range of uses, including environmental conservation, plant resource assessment and education, automatic plant classification systems have to be implemented. The leaves are considered the way medicinal plants are characterized. The automated identification of plant species using photographic leaves is an interesting objective, as biodiversity decreases rapidly in the current mix and taxonomists lack properly trained. The identification of the right plant is the most critical step in the preparation of the medicine that is carried out manually. The identification of these plants is immediately relevant because of demand for mass production. The physical and mental health of human beings is crucial for medicines. For better care it is important to identify and classify medicinal plants. The lack of experts in this area makes it tedious that medicinal plants are properly identified and classified. A fully automated system is therefore highly desirable for medicinal plant classification. This article provides a brief survey of the various models for identifying medicinal plants by taking into account the form and texture of a plant leaf.
机译:地球上的植物在人类和其他生命中起着重要作用。植物对自然循环具有最大的影响力。生物学和农业的植物鉴定是非常苛刻的,因为新的植物发现和植物计算机化更成熟。对于广泛的用途,包括环境保护,植物资源评估和教育,必须实施自动工厂分类系统。叶子被认为是药用植物的特征方式。使用摄影叶片的植物物种的自动鉴定是一个有趣的目标,因为当前混合和分类师缺乏培训的生物多样性迅速降低。正确植物的鉴定是制备手动进行的药物的最关键步骤。由于对批量生产的需求,这些植物的鉴定立即相关。人类的身心健康对药物至关重要。为了更好地照顾,重要的是识别和分类药用植物。这一领域缺乏专家使得药用植物被适当识别和分类。因此,对于药用植物分类,非常需要全自动系统。本文通过考虑植物叶的形式和质地来简要介绍各种模型来识别药用植物。

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