KLASIFIKASI CITRA WADAH MINUMAN REUSABLE DAN NON-REUSABLE BERBASIS COMPUTER VISION MENGGUNAKAN MOBILENETV2

research
  • 19 Oct
  • 2025

KLASIFIKASI CITRA WADAH MINUMAN REUSABLE DAN NON-REUSABLE BERBASIS COMPUTER VISION MENGGUNAKAN MOBILENETV2

Dea Ramanda (15210292), Klasifikasi Citra Wadah Minuman Reusable dan Non-Reusable Berbasis Computer Vision Menggunakan MobileNetV2.

Single-use plastic waste, particularly from beverage bottles, remains a significant contributor to the increasing volume of waste in Indonesia. The limited use of reusable beverage containers underscores the urgent need for technological innovations that can support efficient waste segregation. Addressing this issue, the present study proposes a computer vision-based image classification system designed to automatically distinguish between reusable and non-reusable drinking containers. This research adopts a quantitative experimental approach, employing the MobileNetV2 architecture through transfer learning techniques. The model was trained with augmented and normalized datasets to enhance its generalization across diverse image inputs. Evaluation results demonstrate strong classification performance, achieving 96% accuracy, 99% precision (for tumblers), 95% recall, and a 97% F1-score. These outcomes indicate the effectiveness of MobileNetV2 in identifying visual patterns between container types and its potential for deployment in image-driven waste management systems.

Keywords: Image Classification, Beverage Containers, Reusable, Computer Vision, MobileNetV2

Dea Ramanda (15210292), Klasifikasi Citra Wadah Minuman Reusable dan Non-Reusable Berbasis Computer Vision Menggunakan MobileNetV2.

Single-use plastic waste, particularly from beverage bottles, remains a significant contributor to the increasing volume of waste in Indonesia. The limited use of reusable beverage containers underscores the urgent need for technological innovations that can support efficient waste segregation. Addressing this issue, the present study proposes a computer vision-based image classification system designed to automatically distinguish between reusable and non-reusable drinking containers. This research adopts a quantitative experimental approach, employing the MobileNetV2 architecture through transfer learning techniques. The model was trained with augmented and normalized datasets to enhance its generalization across diverse image inputs. Evaluation results demonstrate strong classification performance, achieving 96% accuracy, 99% precision (for tumblers), 95% recall, and a 97% F1-score. These outcomes indicate the effectiveness of MobileNetV2 in identifying visual patterns between container types and its potential for deployment in image-driven waste management systems.

Keywords: Image Classification, Beverage Containers, Reusable, Computer Vision, MobileNetV2

Unduhan

 

REFERENSI

Adelia Dwi Valentin, Rahman Soesilo, Zahroh Nurhillal, Rahmat Saputra, & Elang Adji. (2025). SOSIALISASI DAMPAK PENGGUNAAN SAMPAH PLASTIK DI LINGKUNGAN DAN KESEHATAN. MONSU’ANI TANO Jurnal Pengabdian Masyarakat, 8(1), 40–47. https://doi.org/10.32529/tano.v8i1.3971

Agustiani, S., Aryanti, R., Khotimatul Wildah, S., Arifin, Y. T., Marlina, S., & Misriati, T. (2024). Optimisasi Model Deep Learning untuk Deteksi Penyakit Daun Tebu dengan Fine-Tuning MobileNetV2. Journal of Informatics Management and Information Technology, 4(4), 150–157. https://doi.org/10.47065/jimat.v4i4.411

Anggun Brillian Aghata, Nafakhatus Sakhariyyah Hasna, & Francisca Adita Maya. (2020). Kelola Sampah Di Sekitar Kita. Gerakan Peduli Lingkungan.

Ari Rahmayani, C. (2021). Efektivitas Pengendalian Sampah Plastik Untuk Mendukung Kelestarian Lingkungan Hidup Di Kota Semarang. In Jurnal Pembangunan Hukum Indonesia Program Studi Magister Ilmu Hukum (Vol. 3, Issue 1).

Castaño, J., Martínez-Fernández, S., Franch, X., & Bogner, J. (2024). Analyzing the Evolution and Maintenance of ML Models on Hugging Face. http://arxiv.org/abs/2311.13380

Dirting, B. D., Okpe, J. O., Chukwudebe, G. A., Ayogu, I. I., & Nwakorie, E. C. (2024). Implementation of a Visualized Multi-Label Hate-speech Intensity model using Gradio. In Journal of Computer & Robotics Education Research (JOCRE) (Vol. 1, Issue 1). https://www.jocre.com.ng

E.R. Davies. (2018). Computer Vision: Principles, Algorithms, Applications, Learning (Fifth Edition). Mara Conner.

Febriyantika, C. (2024). IDENTIFIKASI PENGARUH SUHU DAN WAKTU PENYIMPANAN  TERHADAP KANDUNGAN BISPHENOL-A DALAM SAMPEL AIR  GALON POLIKARBONAT SERTA VALIDASI METODE  PENGUKURANNYA DENGAN SPEKTROFOTOMETRI UV-VIS.

Fithri, D. L., Setiawan, R., Wibowo, B. C., Nugraha, F., & Latifah, N. (2024). Pengelolaan Bank Sampah Muria Berseri berbasis Digital Desa Gondangmanis Kabupaten Kudus. 4(1), 51–58.

Gelar Guntara, R. (2023). Pemanfaatan Google Colab Untuk Aplikasi Pendeteksian Masker Wajah Menggunakan Algoritma Deep Learning YOLOv7. Jurnal Teknologi Dan Sistem Informasi Bisnis, 5(1), 55–60. https://doi.org/10.47233/jteksis.v5i1.750

Ginting, Y., Hantoro, K., Yunizar Pratama Yusuf, A., & Bhayangkara Jakarta Raya, U. (2024). Deteksi Jenis Sampah Plastik Berbasis Mobile Menggunakan Model Transfer Learning. https://doi.org/10.37817/tekinfo.v25i2

Hikmatia, N., & Zul, M. I. (2021). Aplikasi Penerjemah Bahasa Isyarat Indonesia menjadi  Suara berbasis Android menggunakan Tensorflow. In Jurnal Komputer Terapan (Vol. 7, Issue 1). https://jurnal.pcr.ac.id/index.php/jkt/

Karim, M. Rezaul., Sewak, Mohit., & Pujari, Pradeep. (2018). Practical Convolutional Neural Networks : Implement advanced deep learning models using Python. Packt Publishing.

Koul, A., Ganju, S., & Kasam, M. (2020). Practical Deep Learning for Cloud, Mobile, and Edge Real-World AI and Computer-Vision Projects Using Python, Keras, and TensorFlow. http://oreilly.com

Maulidah, N., Supriyadi, R., Utami, D. Y., Hasan, F. N., Fauzi, A., & Christian, A. (2021). Prediksi Penyakit Diabetes Melitus Menggunakan Metode Support Vector Machine dan Naive Bayes. Indonesian Journal on Software Engineering (IJSE), 7(1), 63–68. http://ejournal.bsi.ac.id/ejurnal/index.php/ijse63

Mochammad Toyib, Tegar Decky Kurniawan Pratama, & Ibnu Aqil. (2024). Penerapan Algoritma CNN Untuk Mendeteksi Tulisan Tangan Angka Romawi dengan Augmentasi Data. Algoritma : Jurnal Matematika, Ilmu Pengetahuan Alam, Kebumian Dan Angkasa, 2(3), 108–120. https://doi.org/10.62383/algoritma.v2i3.69

Muhammad, R., Pramudika, V., & Hablul Barri, M. (2024). Sistem Pemilah Sampah Berbasis Deep Learning dengan Algoritma SSD-MobileNet v2 (Vol. 11, Issue 1).

Ramadhan, U., Santoso, N., Gamar, F., Mekanika, D., Energi, D., Terapan, S., Mekatronika, T., Elektronika, P., & Surabaya, N. (2025). Deteksi Sampah Botol Plastik di Perairan Menggunakan YOLO v4-Tiny. 7(1). https://doi.org/10.47233/jteksis.v5i1.1744

Reynaldi Valerian, F., Syarief, M., Abdul Fatah, D., Raya Telang, J., Kamal, K., & Timur, J. (2025). KLASIFIKASI TINGKAT OBESITAS MENGGUNAKAN METODE GBM DAN CONFUSION MATRIX. In Jurnal Mahasiswa Teknik Informatika) (Vol. 9, Issue 2).

Rismayadi, D. A., Muharam, M. A., Kreatif, F. I., Teknik Informatika, D., & Bandung, U. T. (2024). PEMANFAATAN MACHINE LEARNING UNTUK OPTIMALISASI LIMBAH DENGAN MODEL MOBILENETV2 PADA APLIKASI ANDROID. 06.

Rohman Dijaya. (2023). Buku Ajar Pengolahan Citra Digital. UMSIDA Press.

Saputra, O., Iskandar Mulyana, D., & Yel, M. B. (2022). Implementasi Algoritma Convolutional Neural Network (CNN) Untuk Klasifikasi Senjata Tradisional Di Jawa Tengah Dengan Metode Transfer Learning.

Theofilus, R., & Kurniawan, R. (2024). Deteksi Sampah di Permukaan Sungai menggunakan Convolutional Neural Network dengan Algoritma YOLOv8 Studi Kasus: Sungai Ciliwung (Detection of Floating Wastes on River Surface using Convolutional Neural Network with YOLOv8 Algorithm (Case Study: Ciliwung River)).

Utami, D. Y., Nurlelah, E., & Hasan, F. N. (2021). Comparison of Neural Network Algorithms, Naive Bayes and Logistic Regression to predict diabetes. JOURNAL OF INFORMATICS AND TELECOMMUNICATION ENGINEERING, 5(1), 53–64. https://doi.org/10.31289/jite.v5i1.5201