Performance and EfficiencyComparison of U-Net and Ghost U-Net in Road Crack Segmentation with Floating Point and Quantization Optimization

Dublin Core

Title

Performance and EfficiencyComparison of U-Net and Ghost U-Net in Road Crack Segmentation with Floating Point and Quantization Optimization

Subject

U-Net;Ghost U-Net;image segmentation;memory efficiency; quantization

Description

This study presents a comprehensive comparison of U-Net and Ghost U-Net for road crack segmentation, emphasizing their performance and memory efficiency across various data representation formats, including FP32, FP16, and INT8 quantization. A dataset of 12,480images was used, with preprocessing steps such as binarization and normalization to improve segmentation accuracy. Results show that Ghost U-Net achieved a marginally higher performance, with an IoU of 0.5041 and a Dice coefficient of 0.6664, compared to U-Net’s IoU of 0.5034 and Dice coefficient of 0.6662. Ghost U-Net also demonstrated significant memory efficiency, reducing GPU usage by up to 60% in FP16 and INT8 formats. However, a sharp decline in performance was observed for Ghost U-Net in the INT8 format, where the IoU dropped to 0.2038 and the Dice coefficient to 0.3227, whereas U-Net maintained stable performance across all formats. These findings suggest that Ghost U-Net is preferable for applications prioritizing memory efficiency and inference speed, while U-Net may be better suited for tasks requiring consistent accuracy across different quantization levels. This study underscores the importance of considering bothperformance stability and memory efficiency when selecting models for deployment in real-world application

Creator

Haidhi Angkawijana Tedja1*, Onno W. Purbo

Source

https://jurnal.iaii.or.id/index.php/RESTI/article/view/6089/994

Publisher

Departmentof Computer Science, Informatics, Institut Teknologi Tangerang Selatan, Tangerang Selatan, Indonesia

Date

28-12-2024

Contributor

FAJAR BAGUS W

Format

PDF

Language

ENGLISH

Type

TEXT

Files

Collection

Citation

Haidhi Angkawijana Tedja1*, Onno W. Purbo, “Performance and EfficiencyComparison of U-Net and Ghost U-Net in Road Crack Segmentation with Floating Point and Quantization Optimization,” Repository Horizon University Indonesia, accessed January 26, 2026, https://repository.horizon.ac.id/items/show/10453.