Skip to content

Latest commit

 

History

History
17 lines (10 loc) · 1.69 KB

File metadata and controls

17 lines (10 loc) · 1.69 KB

Plant Monitoring System with Animal Intrusion Detection

The Plant Monitoring System with Animal Intrusion Detection is a prototype developed to help farmers and gardeners address the challenges posed by plant health and animal intrusions. The system employs machine learning algorithms, a computer, a microcontroller, and a camera to provide an effective monitoring tool for plant health and animal intrusions.

The YOLOv5 model is used to detect leaf blight disease with a mean average precision of 38.80% (mAP 0.5) and 13.3% (mAP 0.5:0.95), resulting in a precision of 56% and a recall of 37.90%. Additionally, a motion sensor and laser tripwire are included in the system for detecting animal intrusions with high accuracy rates of 90% and 95%.

In the event of any detections, the system sends real-time SMS alerts to farmers, allowing them to take appropriate action promptly. This system has the potential to significantly improve farming productivity and sustainability, and additional evaluation is necessary to validate accuracy. Further testing with a larger sample size may be required to improve accuracy, and adjusting the confidence level may also lead to better results.

329080626_3444203832567977_7573930755452693176_n Plant Monitoring Application Dashboard

Screenshot 2023-02-15 210348 Set Capturing Time Feature of the Application

schematic diagram

Schematic Diagram of the System