ANALYSIS OF LIBRARY VISITOR GROUPING THROUGH MASK USAGE IDENTIFICATION IN XIN ZHONG LIBRARY WITH ORANGE DATA MINING APPLICATION
DOI:
https://doi.org/10.24269/pls.v9i1.11508Abstract
Abstract
The application of data mining in libraries plays a crucial role in supporting data management and monitoring health protocols, especially during the pandemic. A key challenge faced by librarians is effectively monitoring visitors' mask usage compliance. This study aims to analyze visitors' facial images at the library using the Orange Data Mining application, enabling librarians to identify whether visitors are wearing masks. The approach involves collecting random facial images of visitors, preprocessing the data for standardization of size and resolution, extracting features using the Inception V3 model, and conducting hierarchical clustering analysis with the Manhattan metric. The clustering results are visualized in a dendrogram, helping to group the data. The findings show that the dendrogram clearly differentiates between visitors with masks and those without. This visualization provides librarians with an effective tool for monitoring areas of the library that require more strict health protocol supervision. The study concludes that the Orange Data Mining application offers a practical solution for libraries to monitor compliance with health protocols. By utilizing data mining techniques, libraries can enhance visitor safety and comfort. Further research is suggested to expand the dataset and explore other methods to improve analysis accuracy.
References
Dodda, R., Raghavendra, C., & Azmera, C. N. (2025). Real-Time Face Mask Detection Using Deep Learning: Enhancing Public Health and Safety. E3S Web of Conferences, 02013.
https://www.e3sconferences.org/articles/e3sconf/pdf/2025/16/e3sconf_icregc d2025_02013.pdf
Dubey, P., Keswani, V., & Bhagat, D. (2025). Innovative IoT-enabled Mask Detection System: A Hybrid Deep Learning Approach for Public Health Applications. MethodsX, Elsevier.
https://www.sciencedirect.com/science/article/pii/S2215016125001372
E-Journal Institut Teknologi Sepuluh Nopember (ITS). Sistem Otomatis Pendeteksi Wajah Bermasker Menggunakan Deep Learning. Diakses dari: https://ejurnal.its.ac.id/index.php/teknik/article/viewFile/59790/6649
E-Journal Universitas Negeri Surabaya (UNESA). Sistem Pendeteksian Penggunaan Masker pada Wajah Menggunakan Metode Machine Learning. Diakses dari:
https://ejournal.unesa.ac.id/index.php/jurnal-manajemen-informatika/article/view/55867
Gonzalez, R. C., & Woods, R. E. (2002). Digital Image Processing. Prentice Hall.
Journal of Artificial Intelligence Research. Optimizing Convolutional Neural Networks for Real-Time Face Mask Detection. Diakses dari:
https://www.jair.org/index.php/jair/article/view/112233
Jurnal Komputer dan Sistem Informasi. Penerapan CNN untuk Deteksi Penggunaan Masker pada Citra Wajah. Diakses dari:
https://jurnalkomputer.sisteminformasi.ac.id/article/view/56789.
Jurnal STKIP PGRI Tulungagung. Klasifikasi Deteksi Penggunaan Masker Menggunakan Metode Convolutional Neural Network (CNN). Diakses dari: https://jurnal.stkippgritulungagung.ac.id/index.php/jipi/article/view/3748
Jurnal Teknologi dan Inovasi. Penerapan Deep Learning untuk Deteksi Kepatuhan Protokol Kesehatan di Tempat Umum. Diakses dari:
https://journal.technology-and-innovation.org/article/view/12345.
Jurnal Universitas Muhammadiyah Jakarta (UMJ). Aplikasi Deteksi Masker Wajah Menggunakan Metode Deep Learning. Diakses dari:
https://jurnal.umj.ac.id/index.php/just-it/article/view/21863.
Kanavos, A., Papadimitriou, O., & Al-Hussaeni, K. (2024). Real-Time Detection of Face Mask Usage Using Convolutional Neural Networks. Computers, 13(7), 182. https://www.mdpi.com/2073-431X/13/7/182
Kim, S., & Patel, R. 2020. Hierarchical Clustering Applications in Visual Data Analysis.
Li, Q., et al. 2021. Cluster Analysis for Health Data Using Orange Data Mining.
Rahman, A., et al. 2020. Image Classification with Orange Data Mining.
Repository Universitas 17 Agustus 1945 Surabaya (UNTAG SBY). Sistem Deteksi Pemakaian Masker Menggunakan Convolutional Neural Network. Diakses dari: https://repository.untag-sby.ac.id/11269/8/JURNAL.pdf.
Smith, J., & Zhao, L. 2021. Monitoring Public Health Compliance with Machine Learning.
Szegedy, C., et al. (2016). Rethinking the Inception Architecture for Computer Vision. CVPR.
Tan, P. N., Steinbach, M., & Kumar, V. (2006). Introduction to Data Mining. Addison-Wesley.
Williams, T., & Ahmed, K. 2019. Using Inception V3 for Feature Extraction in Image Analysis.
Xu, R., & Wunsch, D. (2005). Survey of Clustering Algorithms. IEEE Transactions on Neural Networks.
Downloads
Published
How to Cite
Issue
Section
License
Licence
This Journal will place Author as Copyright Holder, The non-commercial use of the article will be governed by the Creative Commons Attribution license as currently displayed on Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
Author(s)' Warranties
The author warrants that the article is original, written by stated author(s), has not been published before, contains no unlawful statements, does not infringe the rights of others, is subject to copyright that is vested exclusively in the author and free of any third party rights, and that any necessary written permissions to quote from other sources have been obtained by the author(s).
Plagiarism Notice
PUBLIS Editorial board recognizes that plagiarism is not acceptable and therefore establishes the following policy stating specific actions (penalties) upon identification of plagiarism/similarities in articles submitted for publication in PUBLIS. PUBLIS will use Turnitin's originality checking software as the tool in detecting similarities of texts in article manuscripts and the final version articles ready for publication. A maximum of 30% of similarities is allowed for the submitted papers. Should we find more than 30% of the similarity index, the article will be returned to the author for correction and resubmission.