
(2) * Ida Nurhaida

*Corresponding author
AbstractThe rapid advancement of digital technology has heightened the need for reliable methods to verify signature authenticity, a critical aspect of document and transaction security. This study uses a deep learning approach to develop a mobile application to verify the originality of paper and digital media signatures. The dataset comprises 1,060 signature images, including authentic and forged categories for both media types. The system employs the EfficientNetV2M model, trained with augmented data, to enhance robustness. Model evaluation demonstrates strong performance with an accuracy of 82.07%, a global precision of 81.31%, a global recall of 83.25%, and a global F1-score of 82.18%. The model is implemented in an Android-based mobile application, providing an intuitive interface for users to upload and verify signatures in real time. These results underscore the potential of EfficientNetV2M for mitigating signature fraud across various domains while highlighting areas for improvement, particularly in classifying paper-based signatures. Future work will focus on expanding the dataset and refining feature extraction techniques to enhance classification performance.
KeywordsDeep learning; Digital signature; Efficient NetV2M; Paper signature; Signature verification
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DOIhttps://doi.org/10.33122/ejeset.v5i1.310 |
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References
Andani, M. W., & Satya Nugraha, G. (2020). Signature Verification Using Feature of LBP and DCT With LVQ Classifier. Jurnal Teknologi Informasi, Komputer, Dan Aplikasinya (JTIKa), 2(2). https://doi.org/https://doi.org/10.29303/jtika.v2i2.107
Delvina, A. (2019). Penggunaan Tanda Tangan Elektronik dalam Pengajuan Pembiayaan berdasarkan Prinsip Syariah. Jurnal Akuntansi Bisnis Dan Ekonomi, 5(1). https://doi.org/10.33197/JABE.VOL5.ISS1.2019.230
Evidently AI. (2024, October 1). Accuracy, precision, and recall in multi-class classification. https://www.evidentlyai.com/classification-metrics/multi-class-metrics
Gülcüoğlu, E., Ustun, A. B., & Seyhan, N. (2021). Comparison of Flutter and React Native Platforms. Journal of Internet Applications and Management. https://doi.org/10.34231/iuyd.888243
Ihsan, D. (2022, July 18). Kasus Tanda Tangan Palsu, Rektor Unila Buka Suara . https://www.kompas.com/edu/read/2022/07/18/163653471/kasus-tanda-tangan-palsu-rektor-unila-buka-suara
Izdihar Hulwa, S., Khairani Br Ginting, R., Merlani Purba, D., Stevani Siahaan, C., Gabriel Siahaan, P., & Pika Lb Batu, D. (2023). Tindak Pidana Pemalsuan Tanda Tangan Akta Tanah Ditinjau Dari Pasal 263 KUHP (Putusan No. 55/Pid.Pra/2023/Pn. Medan). 03(06), 799–807. https://j-innovative.org/index.php/Innovative
Jahandad, Sam, S. M., Kamardin, K., Amir Sjarif, N. N., & Mohamed, N. (2019). Offline signature verification using deep learning convolutional Neural network (CNN) architectures GoogLeNet inception-v1 and inception-v3. Procedia Computer Science, 161, 475–483. https://doi.org/10.1016/j.procs.2019.11.147
Krstinić, D., Braović, M., Šerić, L., & Božić-Štulić, D. (2020). Multi-label Classifier Performance Evaluation with Confusion Matrix. 01–14. https://doi.org/10.5121/csit.2020.100801
Mosaher, Q. S., & Hasan, M. (2022). Offline Handwritten Signature Recognition Using Deep Convolution Neural Network. European Journal of Engineering and Technology Research, 7, 44–47. https://doi.org/10.24018/ejeng.2022.7.4.2851
Najda, D., & Saeed, K. (2024). Impact of augmentation methods in online signature verification. Innovations in Systems and Software Engineering, 20(3), 477–483. https://doi.org/10.1007/s11334-022-00464-4
Nathwani, C. (2020). Online Signature Verification Using Bidirectional Recurrent Neural Network. 2020 4th International Conference on Intelligent Computing and Control Systems (ICICCS), 1076–1078. https://doi.org/10.1109/ICICCS48265.2020.9121023
Ningtyas, D. F., & Setiyawati, N. (2021). Implementasi Flask Framework pada Pembangunan Aplikasi Purchasing Approval Request. Jurnal Janitra Informatika Dan Sistem Informasi, 1(1), 19–34. https://doi.org/10.25008/janitra.v1i1.120
Octariadi, B. C. (2020). Pengenalan Pola Tanda Tangan Menggunakan Metode Jaringan Syaraf Tiruan Backpropagation. Jurnal Teknoinfo, 14(1), 15–21. https://doi.org/10.33365/jti.v14i1.462
Özyurt, F., Majidpour, J., Rashid, T. A., & Koç, C. (2023). Offline Handwriting Signature Verification: A Transfer Learning and Feature Selection Approach. Traitement Du Signal, 40(6), 2613–2622. https://doi.org/10.18280/ts.400623
Pramono, A. (2024). Kades di Bone Geram Tanda Tangannya Dipalsukan untuk Bantuan Motor 3 Roda. Detiksulsel. https://www.detik.com/sulsel/berita/d-7127627/kades-di-bone-geram-tanda-tangannya-dipalsukan-untuk-bantuan-motor-3-roda
Pujianto, R., Lestari, M., Wayan, N., Septiani, P., Raya, J., No, T., Gedong, K., Rebo, P., & Timur, J. (2021). Pengolahan Citra Dan Metode Support Vector Machine (Svm) Dalam Pengenalan Pola Tanda Tangan. JRKT (Jurnal Rekayasa Komputasi Terapan), 01(01), 2776–5873. https://doi.org/10.30998/jrkt.v1i01.4048
Putra, I. K. N., Dewi, N. P. D. A. S., Pusparani, D. A., & Mupu, D. N. (2023). Signature Identification using Digital Image Processing and Machine Learning Methods. Jurnal Eltikom, 7(1), 29–37. https://doi.org/10.31961/eltikom.v7i1.618
Rabbi, Md. T. F., Rahman, S. M. T., Biswash, P., Kim, J., Sheikh, A., Saha, A. K., & Uddin, M. S. (2019). Handwritten Signature Verification Using CNN with Data Augmentation. The Journal of Contents Computing, 1(1), 25–37. https://doi.org/http://dx.doi.org/10.9728/jcc.2019.12.1.1.25
Rudiansyah, Ryanto, S. S., Rojali, Pandia, H., Marwan, R., Yoshara, R., & Effendi, K. (2021). Aplikasi Deteksi Penyakit Tuberculosis (TB) Pada Balita Menggunakan Metode Pengolahan Citra Matlab. Jurnal Teknik Informatika, 1(3), 20–25. https://doi.org/10.58794/jekin.v1i3.354
Sitarz, M. (2022). Extending F1 metric, probabilistic approach. https://doi.org/10.54364/AAIML.2023.1161
Swaminathan, S., & Tantri, B. R. (2024). Confusion Matrix-Based Performance Evaluation Metrics. African Journal of Biomedical Research, 4023–4031. https://doi.org/10.53555/AJBR.v27i4S.4345
Tan, M., & Le, Q. V. (2021). EfficientNetV2: Smaller Models and Faster Training. https://doi.org/10.48550/arXiv.2104.00298
Tashildar, A., Shah, N., Gala, R., Giri, T., & Chavhan, P. (2020). APPLICATION DEVELOPMENT USING FLUTTER. International Research Journal of Modernization in Engineering Technology and Science @International Research Journal of Modernization in Engineering, 02(08). www.irjmets.com
Tirumala, M. G., Sowjanya, T., Lokesh, D., Lokesh, E., & Sheel, S. G. (2024). Advanced signature identification and verification: using digital image processing and machine learning. Journal of Engineering Sciences, 15(04), 1724–1735.
Widiawati, C. R. A., & Suliswaningsih, S. (2022). Analisa Hasil Perbandingan Poly Kernel Dan Normalisasi Poly Kernel Pada Support Vector Machine Sebagai Metode Klasifikasi Citra Tanda Tangan. Jurnal Informatika, 9(1), 71–77. https://doi.org/10.31294/inf.v9i1.11288
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