Machine Learning Approach

Author:

S. Roopashree1ORCID,J. Anitha2,P. Madhumathy3

Affiliation:

1. Dayananda Sagar University, India & Visvesvaraya Technological University, India

2. RV Institute of Technology and Management, India

3. Dayananda Sagar Academy of Technology and Management, India

Abstract

Ayurveda medicines uses herbs for curing many ailments without side effects. The biggest concern related to Ayurveda medicine is extinction of many important medicinal herbs, which may be due to insufficient knowledge, weather conditions, and urbanization. Another reason consists of lack of online facts on Indian herbs because it is dependent on books and experts. This concern has motivated in utilizing the machine learning techniques to identify and reveal few details of Indian medicinal herbs because, until now, it is identified manually, which is cumbersome and may lead to errors. Many researchers have shown decent results in identifying and classifying plants with good accuracy and robustness. But no complete framework and strong evidence is projected on Indian medicinal herbs. Accordingly, the chapter aims to provide an outline on how machine learning techniques can be adopted to enrich the knowledge of Indian herbs, which advantages both common man and the domain experts with wide information on traditional herbs.

Publisher

IGI Global

Reference49 articles.

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3. Pattern recognition of medicinal leaves using image processing techniques.;C.Ananthi;Journal of Nanoscience and Nanotechnology,2014

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