ResNet50-Driven Quality Inspection for Recorder Musical Instrument

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Title

ResNet50-Driven Quality Inspection for Recorder Musical Instrument

Subject

defect detection; musical instrument; neural network; recorder; ResNet50

Description

The manufacturer of a recorder musical instrument requires high-quality product. The aim is to produce precise tones and an aesthetic look at customer satisfaction. A major challenge encountered by manufacturers is traditional visual inspection. Human error is a major factor, notably over extended work periods and the subjective judgment of quality control personnel. This paper reports on the development of a machine vision system for detecting abnormal patterns on the inner surface of a recorder musical instrument. An industrial-grade camera with a resolution of 1280 × 1024, paired with industrial lighting, was utilized. Due to its tube-shaped construction of the object, the bright-field imaging technique is applied to illuminate the interior. ResNet50 was selected as a feature extractor due to its balance between accuracy and efficiency. In addition, a Neural Network served as the classifier. A total of 1,118 images were collected as training data and 304 images as testing data. Thetraining and testing data were separate sets that were taken independently, preventing any risk of data leakage. The test results indicated that the model performed exceptionally well in classification, achieving an accuracy of 95.7%, precision of 95.45%,sensitivity of 96.07%, and specificity of 95.36%. Moreover, the area under the curve of the Receiver Operating Characteristic (ROC AUC) score in test data reached 0.9906, reflecting the model's ability to separate features from the two classes. These findings suggest that the proposed method offers an alternative to subjective visual inspection. Future research may examine diverse deep learning architectures to further enhance performance while achieving faster classification.

Creator

Rizki Putra Prastio1, Rodik Wahyu Indrawan2, Vanesia Tasib3, Zhilaan Abdurrasyid Rusmawan

Source

https://jurnal.iaii.or.id/index.php/RESTI/article/view/7058/1131

Publisher

Robotics and Artificial Intelligence Engineering, Faculty of Advanced Technology and Multidiscipline,Universitas Airlangga, Surabaya, Indonesia

Date

September 29, 2025

Contributor

FAJAR BAGUS W

Format

PDF

Language

ENGLISH

Type

TEXT

Files

Collection

Citation

Rizki Putra Prastio1, Rodik Wahyu Indrawan2, Vanesia Tasib3, Zhilaan Abdurrasyid Rusmawan, “ResNet50-Driven Quality Inspection for Recorder Musical Instrument,” Repository Horizon University Indonesia, accessed February 9, 2026, https://repository.horizon.ac.id/items/show/10601.