Analisis Performansi Pendekatan Machine Learning pada Deteksi Penyakit Daun Tanaman Kopi

Penulis

  • Yodhi Yuniarthe Universitas Mitra Indonesia
  • Rosyana Fitria Purnomo Universitas Mitra Indonesia
  • Hilda Dwi Yunita Universitas Mitra Indonesia
  • Fatimah Fahurian Universitas Mitra Indonesia
  • Ahmad Ikhwan Universitas Mitra Indonesia

DOI:

https://doi.org/10.51903/p2t2nm71

Kata Kunci:

Coffee Classification, Image Processing, Machine Learning, Plant Disease Detection.

Abstrak

Detection and identification of plant diseases is critical to the success and efficiency of agricultural production. Plant disease outbreaks are becoming more frequent throughout the world, and the presence of these diseases in cultivated plants has a significant impact on productivity. Therefore, researchers are focusing on developing effective and reliable plant disease detection methods. Thus, farmers can take advantage of early detection of this disease to minimize future losses. This article discusses machine learning approaches as well as decision trees, K-nearest neighbors, naive Bayes, support vector machines (SVM), and random forests for detecting coffee leaf diseases using leaf images. The above-mentioned classifications were researched and compared to determine the most suitable plant disease prediction model with the highest accuracy. Compared with other classification algorithms, the SVM algorithm achieves the highest accuracy of 99.75%. All the models trained above will be used by farmers to quickly identify and classify new diseases in images as a prevention strategy. As a preventive measure, farmers can detect and classify new diseases in images early.

Unduhan

Data unduhan tidak tersedia.

Referensi

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Unduhan

Diterbitkan

2025-12-30

Terbitan

Bagian

Articles

Cara Mengutip

Analisis Performansi Pendekatan Machine Learning pada Deteksi Penyakit Daun Tanaman Kopi. (2025). Seminar Nasional Teknologi Dan Multidisiplin Ilmu (SEMNASTEKMU), 5(1), 497-507. https://doi.org/10.51903/p2t2nm71

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