Journal of Applied Science, Engineering, Technology, and Education
Vol. 8 No. 1 (2026)

Machine Learning Approach for Ibing Penca Stance Recognition Using Landmark Detection and Angle-Based Classification

Ratnadewi (Universitas Kristen Maranatha, Bandung, Indonesia)
Agus Prijono (Universitas Kristen Maranatha, Bandung, Indonesia)
Aan Darmawan Hangkawidjaja (Universitas Kristen Maranatha, Bandung, Indonesia)
Sri Rustiyanti (Institut Seni Budaya Indonesia Bandung, Bandung, Indonesia)
Deri Al Badri (Institut Seni Budaya Indonesia Bandung, Bandung, Indonesia)



Article Info

Publish Date
13 Apr 2026

Abstract

The problem is how students can learn independently when no assistant teachers are present. The main objective of this research is to build an application system that can recognize the stances in Ibing Penca martial art. This research aims to help facilitate independent learning for martial arts practitioners, especially Ibing Penca, by developing a system that is able to recognize and classify the movements in 62 Ibing Penca stances. To achieve these goals, the research method used is to collect input data in the form of images or videos taken using an Orbbec camera. After the images are obtained, the next stage is data processing to detect important points on the body using landmark detection techniques. The next process is the identification of 33 keypoints on the body using the MediaPipe algorithm. From these keypoints, six important angles were calculated which included the right arm, left arm, right leg, left leg, right foot and left foot. This angle calculation is done using the angle method of the three relevant key points. The system is able to recognize the movements in Ibing Penca with a high degree of accuracy, which is very useful for learners who want to practice independently. The results of this study show that the system is able to classify 62 Ibing Penca moves with a success rate of 95.2% (58 moves), while the error rate is only 4.8% (4 moves). For future research, it is expected to develop this system by adding variations of movements and improving detection accuracy in more diverse environmental conditions.

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Journal Info

Abbrev

asci

Publisher

Subject

Civil Engineering, Building, Construction & Architecture Computer Science & IT Electrical & Electronics Engineering Industrial & Manufacturing Engineering Other

Description

Journal of Applied Science, Engineering, Technology, and Education (ASCI) is an international wide scope, peer-reviewed open access journal for the publication of original papers concerned with diverse aspects of science application, technology and ...