A Review on Plant Stress Detection and Analysis Through Electrophysiological Signals

Authors

Kavya Sai
Dept of ECE Dr. B R Ambedkar NIT Jalandhar Jalandhar, India
Neetu Sood
Department of Electronics and Communication Engineering Dr. B. R. Ambedkar National Institute of Technology Jalandhar, 144011, India
Indu Saini
Department of Electronics and Communication Engineering Dr. B. R. Ambedkar National Institute of Technology Jalandhar, 144011, India

Synopsis

The bioelectrical activity like ECG, EMG and EEG provides the health condition of heart, muscles, and brain in human beings. In plants, the sensible measurements of physical activity are in their infant phase. Substitution of technology used in biomedical field (human medicine) might consequently provide an understanding about electrophysiological signal activity in plants. These signals in plants when monitored show various dynamics in different stress conditions like osmotic, cold, low light, chemical, over watering etc. Several studies analysing and classifying features of ideal and stressed signal subtleties have shown promising results. In this paper we present a comprehensive review of research contributed to EPG signal analysis in different domains, applications of machine learning in plant stress detection and classification.

WREC21
Published
September 22, 2021
Online ISSN
2582-3922