Abstract:
country. Most of these plants can be used for therapeutic purposes like when in ancient
days, our ancestors used them vastly and considered them to be one of the most highly
efficient medical systems in the world at that time. However, with the dawn of modern
medicine, indigenous medicine has been decreasing in usage due to factors such as the
lack of knowledge about medical plants, the desire for fast recovery, and the reducing
interest in traditional treatments due to their smells and appearances. Out of the above,
the lack of knowledge about medical plants has been identified as the most contributing
factor that demotivates the general public from using traditional medicine. Hence it is
evident that a reliable and easy-to-use application to identify and analyse medical
plants would be a timely solution to increase the use of traditional medicine in society
today. The main objective of this research was to review the features used for leaf
recognition, evaluate existing leaf-based medicinal recognition systems, and design a
system that would address the loopholes in the available solutions. As such, the
researcher carried out a comprehensive literature survey and reviewed existing
classification methodologies like Support Vector Machine, Principle Component
Analysis, Probabilistic Neural Network and Conventional Neural Network to assess
what the best methodology for the above task would be. Due to its feature-extraction
capability and high levels of accuracy, Conventional Neural Network was selected as
the best approach for this study. Based on the selected method, the researcher designed
and developed a feasible application that is capable of finding medical plants by the
features of its leaf and medical values. Once the system was built, the researcher
distributed surveys and conducted interviews in order to critically test and evaluate the
application among industrial experts as well as general users. An overall recognition
rate of 85% was recorded by the system, which was well-appreciated by the experts.
However, recommendations like probable scope expansions and the need for higher
response times were also suggested in the feedback received
Citation:
Costa, W.D.L.S.A. (2019). Convolutional neural network (CNN) based approach to recognize medicinal plants by analyzing plant leaf [Master’s theses, University of Moratuwa]. Institutional Repository University of Moratuwa. http://dl.lib.mrt.ac.lk/handle/123/16059