Plant Toxicity Classification by Image

Authors

  • Eera Bhatt Troy High School
  • Clayton Greenberg

DOI:

https://doi.org/10.47611/jsrhs.v12i1.4030

Keywords:

Artificial Intelligence, Toxicity, Plants, Image Classification

Abstract

Poisonous and non-poisonous plants have extremely similar visible features to any non-botanist, which puts those in danger who are frequently present in areas containing various plants. Failure to distinguish harmful plants from safe ones puts several people at a high risk of accidents and potential health issues after contact with a toxic plant. While previous work has found ways to classify specific types of plants, a limited amount of research has been done on toxic and non-toxic plants of several species. Since differentiating between dangerous and safe plants is a complex task for a human brain, this study approaches the issue through machine learning models starting with a convolutional neural network (CNN) and discovering that a logistic regression model—trained on a dataset with manually designed features—has the best performance with the dataset used. The neural network demonstrated overfitting which was likely caused by the inconsistent backgrounds of images within the dataset. The logistic regression model achieved an accuracy of 97.37% in its predicted classifications for the plants. The best-performing logistic regression model contained the three-leaf and dark red stem features indicating that these two features are the most reliable ones used to distinguish between toxic and non-toxic plants.

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References or Bibliography

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Published

02-28-2023

How to Cite

Bhatt, E., & Greenberg, C. (2023). Plant Toxicity Classification by Image. Journal of Student Research, 12(1). https://doi.org/10.47611/jsrhs.v12i1.4030

Issue

Section

HS Research Projects