Automatic Spraying System for Plants based on Leaf Image Detection by Using Raspberry Pi Camera Model V2

Telekomunikasi Militer

Penulis

  • Ade Barokah Pustakaan Poltekad
  • Desyderius Minggu Politeknik Angkatan Darat
  • Choirul Rio Prabowo Politeknik Angkatan Darat

DOI:

https://doi.org/10.54317/kom.v6i2.604

Kata Kunci:

automatic spraying, leaf detection, Raspberry Pi v2, digital image processing

Abstrak

The utilization of automated systems to increase crop maintenance efficiency, especially in fertilizer and pesticide application, has been prompted by advancements in precision agriculture technology.  Using a camera module as an automated spraying controller to detect leaf images is one creative method. The integration of the Raspberry Pi v2 Camera Module with digital image processing methods in automated spraying systems is the subject of a comprehensive review of earlier research presented in this article.  Actuator control in the system, analysis of leaf detection techniques, and a review of recent journal literature are some of the techniques employed.  The study's findings show that real-time implementation of this technique which includes color thresholding and texture analysis for leaf detection can be accomplished with good accuracy. The Raspberry Pi v2 Camera Module offers advantages in color image and easy integration with microcontroller. In conclusion, an automated spraying system based on leaf image detection shows great potential in reducing chemical waste and improving spraying precision, although challenges remain related to lighting conditions and crop types. Further research is needed to improve system performance under various field conditions.

Diterbitkan

2025-10-31

Cara Mengutip

Barokah, A., Minggu, D., & Rio Prabowo, C. (2025). Automatic Spraying System for Plants based on Leaf Image Detection by Using Raspberry Pi Camera Model V2: Telekomunikasi Militer. Jurnal Telkommil, 6(2), 1–8. https://doi.org/10.54317/kom.v6i2.604

Terbitan

Bagian

Articles

Artikel Serupa

1 2 3 4 5 6 > >> 

Anda juga bisa Mulai pencarian similarity tingkat lanjut untuk artikel ini.

Artikel paling banyak dibaca berdasarkan penulis yang sama

1 2 3 > >>