Overcoming imbalanced rice seed germination classification: enhancing accuracy for effective seedling identification

Mara, Muhlasah Novitasari and Hidayat, Sidiq Syamsul and Putri, Farika Tono and Rahmawati, Dwi and Wahyuni, Sri and Prabowo, Muhamad Cahyo Ardi and Kabir, Noer Ni'mat Syamsu and Indra, Ragil Tri (2025) Overcoming imbalanced rice seed germination classification: enhancing accuracy for effective seedling identification. IAES International Journal of Artificial Intelligence (IJ-AI), 14 (1). p. 62. ISSN 2089-4872

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Abstract

This study aimed to automatically classify rice seedling germination on day seven using image analysis. The categories included normal, abnormal, and dead seeds. Due to the rarity of abnormal seedlings, capturing their images resulted in imbalanced data. To address this, abnormal categories were combined into a single class. We compared logistic regression, random forest, and deep learning models(VGG19, VGG16, Alex Net) for classification. Surprisingly, logistic regression achieved the highest accuracy (93.89%) and F1-scores (0.96 normal, 0.81 abnormal) despite the imbalanced data and complex task. The effectiveness of logistic regression for rice seedling classification with imbalanced data has been demonstrated in this novel research. Historically, deep learning models dominate image recognition, but our findings suggest simpler models can excel in specific scenarios, especially with limited data availability. This highlights the importance of selecting models based on data characteristics. The urgency for this research stems from the need for efficient and accurate rice seedling evaluation. Improved classification can enhance agricultural practices and optimize resource allocation

Item Type: Article
Uncontrolled Keywords: Image classification; Logistic regression; Machine learning; Model performance; Unbalanced data
Subjects: Computers, Control & Information Theory
Agriculture & Food
Depositing User: Wagiyah
Date Deposited: 26 Dec 2025 05:01
Last Modified: 26 Dec 2025 05:01
URI: https://karya.brin.go.id/id/eprint/57120

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