Comparison of the Application of YOLOv5, YOLOv8, and YOLOv11 for Training Chinese Chess Objects

Authors

  • Ahmad Mufid Panisti Politeknik Negeri Batam
  • Ryan Satria Wijaya Politeknik Negeri Batam
  • Eko Rudiawan Jamzuri Politeknik Negeri Batam
  • Anugerah Wibisana Politeknik Negeri Batam

DOI:

https://doi.org/10.30871/jaic.v10i3.12252

Keywords:

YOLO, Xiangqi, Object Detection, Vision

Abstract

The use of YOLO (You Only Look Once)-based object detection algorithms has become one of the main approaches in visual object recognition and training. This study aims to compare the performance of three versions of YOLO, namely YOLOv5, YOLOv8, and YOLOv11, in training models to detect objects in Chinese chess images. The dataset used consists of images of Chinese chess boards and pieces in various positions and lighting variations. The training process was carried out using uniform parameters to ensure fair evaluation, including batch size, number of epochs, and image resolution. The performance of each model was evaluated based on detection accuracy, inference speed, and computational efficiency metrics. The results of the study show that each version of YOLO has specific advantages in certain aspects, such as training speed or detection precision. From the 7224 images used as the dataset, several results were obtained that were necessary in helping to compile this journal. These included Precision (YOLOv5: 0.94, YOLOv8: 0.96, YOLOv11: 0.98), Recall (YOLOv5: 0.93, YOLOv8: 0.98, YOLOv11: 0.96), and mAP (YOLOv5: 0.96, YOLOv8: 0.98, YOLOv11: 0.99). This study provides important insights into the advantages and disadvantages of each version of YOLO in the specific application of Chinese chess object recognition, as well as providing guidance for developers in choosing the model that suits their project needs. This study provides insights into the strengths and limitations of each YOLO version, offering guidance for selecting appropriate models in real-time Chinese chess object detection applications.

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References

[1] T. Kasa, R. Adha, and S. Haraha, “Fungsi Xiangqi Bagi Masyarakat Tionghoa Di Kota Medan,” Jurnal Cakrawala Mandarin Asosiasi Program Studi Mandairn Indonesia, vol. 1, no. 2, pp. 49–56, 2017.

[2] L. Ma, “Xiangqi vs Chess—The Cultural Differences Reflected in Chinese and Western Games,” Open J. Soc. Sci., vol. 08, no. 03, pp. 52–61, 2020, doi: 10.4236/jss.2020.83006.

[3] C. N. Sari, M. Istoningtyas, and M. Rosario, “Jurnal Politeknik Caltex Riau,” 2019. [Online]. Available: https://jurnal.pcr.ac.id/index.php/jkt/

[4] H. Herdianto, D. Nasution, N. S. Atmaja, and S. Ramadhan, “Penerapan Deep Learning Yolo Untuk Pengukuran Jarak Objek Menggunakan Mono Kamera,” METHOMIKA Jurnal Manajemen Informatika dan Komputerisasi Akuntansi, vol. 8, no. 1, pp. 51–56, Apr. 2024, doi: 10.46880/jmika.Vol8No1.pp51-56.

[5] A. Purno and W. Wibowo, “Implementasi Teknik Computer Vision Dengan Metode Colored Markers Trajectory Secara Real Time,” 2016.

[6] J. Subur et al., “Cyclotron : Jurnal Teknik Elektro Pemanfaatan Teknologi Computer Vision untuk Deteksi Ukuran Ikan Bandeng dalam Membantu Proses Sortir Ikan”.

[7] R. S. Wijaya, W. Saputra, S. Prayoga, and E. R. Jamzuri, “Application of Object Detection and Face Recognition with Customize Dataset on Service Robot,” 2024, pp. 51–65. doi: 10.2991/978-94-6463-620-8_5.

[8] Ryan Satria Wijaya, Rifqi Amalya Fatekha, Senanjung Prayoga, Dzaky Andrawan, Naurah Nazhifah, Mochamad Ari Bagus Nugroho, “Penerapan Visual servoing Robot Lengan dengan Metode Color Recognition sebagai Pemindah Objek Dua Warna Berbeda” Journal Of Applied Electrical Engineering (E-ISSN: 2548-9682), VOL. 9, NO. 1, JUNE 2025

[9] J. Zophie, H. Himawan Triharminto, D. Elekronika, and A. Angkatan Udara, “Implemetasi Algoritma You Only Look Once (YOLO) menggunakan Web Camera untuk Mendeteksi Objek Statis dan Dinamis Implementation of You Only Look Once (YOLO) Algorithm using Web Camera for Static dan Dinamic Object Detection,” vol. 1, no. 1, 2022.

[10] F. Nobis, M. Geisslinger, M. Weber, J. Betz, and M. Lienkamp, “A Deep Learning-based Radar and Camera Sensor Fusion Architecture for Object Detection,” May 2020, [Online]. Available: http://arxiv.org/abs/2005.07431

[11] S. Schneider, G. W. Taylor, and S. C. Kremer, “Deep Learning Object Detection Methods for Ecological Camera Trap Data,” Mar. 2018, [Online]. Available: http://arxiv.org/abs/1803.10842

[12] Z. Tian, C. Shen, H. Chen, and T. He, “FCOS: Fully Convolutional One-Stage Object Detection,” Aug. 2019, [Online]. Available: http://arxiv.org/abs/1904.01355

[13] J. Pang, K. Chen, J. Shi, H. Feng, W. Ouyang, and D. Lin, “Libra R-CNN: Towards Balanced Learning for Object Detection,” Apr. 2019, [Online]. Available: http://arxiv.org/abs/1904.02701

[14] X. Xie, G. Cheng, J. Wang, X. Yao, and J. Han, “Oriented R-CNN for Object Detection.” [Online]. Available: https://github.com/jbwang1997/

[15] H. Jiang and E. Learned-Miller, “Face Detection with the Faster R-CNN,” Jun. 2016, [Online]. Available: http://arxiv.org/abs/1606.03473

[16] J. Pedoeem and R. Huang, “Yolo-Lite: A Real-Time Object Detection Algorithm Optimized for Non-GPU Computers,” Nov. 2018, [Online]. Available: http://arxiv.org/abs/1811.05588

[17] W. Fang, L. Wang, and P. Ren, “Tinier-YOLO: A Real-Time Object Detection Method for Constrained Environments,” IEEE Access, vol. 8, pp. 1935–1944, 2020, doi: 10.1109/ACCESS.2019.2961959.

[18] Y. Apridiansyah, Z. Padli, Y. Reswan, and H. Witriyono, “Penerapan Metode YOLOv5 untuk Klasifikasi dan Deteksi Objek Menggunakan Video Non-Real-Time,” Jurnal PROCESSOR, vol. 20, no. 2, Oct. 2025, doi: 10.33998/processor.2025.20.2.2508.

[19] R. Rahman, Z. Bin Azad, and Md. B. Hasan, “Densely-Populated Traffic Detection using YOLOv5 and Non-Maximum Suppression Ensembling,” Aug. 2021, doi: 10.1007/978-981-16-6636-0_43.

[20] A. Simeth, A. A. Kumar, and P. Plapper, “Flexible and robust detection for assembly automation with YOLOv5: a case study on HMLV manufacturing line,” J. Intell. Manuf., vol. 36, no. 5, pp. 3447–3463, Jun. 2025, doi: 10.1007/s10845-024-02411-5.

[21] M. H. Ashar and D. Suarna, “KLIK: Kajian Ilmiah Informatika dan Komputer Implementasi Algoritma YOLOv5 dalam Mendeteksi Penggunaan Masker Pada Kantor Biro Umum Gubernur Sulawesi Barat,” Media Online, vol. 3, no. 3, pp. 298–302, 2022, [Online]. Available: https://djournals.com/klik

[22] R. S. Wijaya, S. Hasibuan, A. Wibisana, E. R. Jamzuri, and M. A. B. Nugroho, “Comparative Study of Deep Learning Algorithms Between YOLOv5 and Mobilenet-SSDv2 As Fast and Robust Outdoor Object Detection Solutions,” 2024, pp. 94–106. doi: 10.2991/978-94-6463-620-8_8.

[23] “9757-Article Text-29352-1-10-20250310”.

[24] M. Yusup Efendi, R. Wulanningrum, A. Bagus Setiawan, and U. Nusantara PGRI Kediri, “Rancang Bangun Sistem Deteksi Manusia dengan YOLO pada video CCTV,” Online, 2024.

[25] D. Pang and G. Mangindaan, “Techno Science Journal Penentuan Posisi Buah Catur Berbasis Hu Moments yang Dimodifikasi untuk Robot Pemain Catur dengan Sistem Tersemat Identifying the Chess Pieces Configuration Based on Modified Hu Moments for Chess Playing Robot with Embedded System”.

[26] N. Khamdi, dan Riki Putra, and P. Caltex Riau, “Cyclotron : Jurnal Teknik Elektro Implementasi Sensor Magnet untuk Posisi Bidak Catur pada Robot Catur,” vol. 6.

[27] R. Satria Wijaya, A. Yunisa Anadia, R. Amalya Fatekha, and S. Prayoga, “Real-Time Chinese Chess Piece Character Recognition using Edge AI,” 2025. [Online]. Available: http://jurnal.polibatam.ac.id/index.php/JAIC

[28] D. Ramadhany and B. Henryranu Prasetio, “Sistem Deteksi Kebosanan dan Kantuk Mahasiswa Pada Proses Pembelajaran Berbasis YOLOv11 yang diimplementasikan dengan NCNN di Raspberry Pi,” 2025. [Online]. Available: http://j-ptiik.ub.ac.id

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Published

2026-06-08

How to Cite

[1]
A. M. Panisti, R. S. Wijaya, E. R. Jamzuri, and A. Wibisana, “Comparison of the Application of YOLOv5, YOLOv8, and YOLOv11 for Training Chinese Chess Objects”, JAIC, vol. 10, no. 3, pp. 2190–2197, Jun. 2026.

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