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All Journal International Journal of Evaluation and Research in Education (IJERE) Jurnal Teknologi Informasi dan Ilmu Komputer JUSIFO : Jurnal Sistem Informasi International Journal of Artificial Intelligence Research Kinetik: Game Technology, Information System, Computer Network, Computing, Electronics, and Control Indonesian Journal of Information System Jurnal Nasional Komputasi dan Teknologi Informasi Journal of Computer Science and Informatics Engineering (J-Cosine) JIPI (Jurnal Ilmiah Penelitian dan Pembelajaran Informatika) Antivirus : Jurnal Ilmiah Teknik Informatika International Journal of Artificial Intelligence Mobile and Forensics ILKOMNIKA: Journal of Computer Science and Applied Informatics Jurnal Teknika Kontribusia : Research Dissemination for Community Development E-Link: Jurnal Teknik Elektro dan Informatika REMIK : Riset dan E-Jurnal Manajemen Informatika Komputer BERNAS: Jurnal Pengabdian Kepada Masyarakat Jurnal Teknologi Sistem Informasi dan Sistem Komputer TGD Jurnal Pengabdian dan Pemberdayaan Nusantara (JPPNu) Indexia Jurnal Abdi Masyarakat Indonesia KREATIF: Jurnal Pengabdian Masyarakat Nusantara Digital Transformation Technology (Digitech) Prosiding SEMNAS INOTEK (Seminar Nasional Inovasi Teknologi) Scientica: Jurnal Ilmiah Sains dan Teknologi Kohesi: Jurnal Sains dan Teknologi SULUH ABDI : Jurnal Ilmiah Pengabdian Kepada Masyarakat Saber: Jurnal Teknik Informatika, Sains dan Ilmu Komunikasi KREATIF: Jurnal Pengabdian Masyarakat Nusantara
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Journal : Kinetik: Game Technology, Information System, Computer Network, Computing, Electronics, and Control

Convolutional Neural Network (CNN) Models for Crop Diseases Classification Deni Sutaji; Harunur Rosyid
Kinetik: Game Technology, Information System, Computer Network, Computing, Electronics, and Control Vol. 7, No. 2, May 2022
Publisher : Universitas Muhammadiyah Malang

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.22219/kinetik.v7i2.1443

Abstract

Crop diseases have a significant impact on agricultural production. As a result, early diagnosis of crop diseases is critical. Deep learning approaches are now promising to improve disease detection. Convolutional Neural Network (CNN) models can detect crop disease using images with automatic feature extraction. This study proposes crop disease classification considering ten pre-trained CNN models. Fine-tuning for each model was conducted in the Plant Village dataset. The experimental results show that fine-tuning improves the model’s performance with an average accuracy of 8.85%. The best CNN model was DenseNet121, with 94.48% and 98.97% accuracy for freezing all layers and unfreezing last block convolution layers. Moreover, fine-tuning produces less time-consuming with an average of 2.20 hours. VGG19 is the less time-consuming reduction by 8 hours. On the other hand, MobileNetV2 is the second-best performance model with less time-consuming than DenseNet121, and produces fewer parameters, which is affordable for embedding it to mobile devices.