Published: 2025-04-01

FPGA and GPU Utilization in Industrial Image Processing: Comparative Study and Application

DOI: 10.35870/ijsecs.v5i1.3273

Front Cover IJSECS VOLUME 5 NOMOR 3 DESEMBER 2025

Downloads

Article Metrics
Share:

Abstract

This work aims to investigate the FPGA (Field-Programmable Gate Array) and GPU (Graphical Processing Unit) technology in image optimization research for an industrial frontier study. Using an experimental method, the research compared the efficiency of two technologies as implemented in some many image processing algorithms. NI CompactRIO platform for FPGA implementation and NVIDIA GeForce GTX 970 in GPU processing performed differently. As is well known, low-lag applications (camera synchronization, real-time data processing etc.) were very well suited for FPGAs. GPUs with architecture CUDA, on the other hand could be a thousand times faster than traditional CPUs in parallel data processing. Other challenges identified through analysis were FPGA design optimization and GPU resource wise utilization. The results give recommendation in terms of selecting technologies based on the features for image industrial processing applications

Keywords

FPGA ; GPU ; Industrial Image Processing ; Parallel Computing ; CUDA ; Performance Optimization ; LabVIEW

Peer Review Process

This article has undergone a double-blind peer review process to ensure quality and impartiality.

Indexing Information

Discover where this journal is indexed at our indexing page to understand its reach and credibility.

Open Science Badges

This journal supports transparency in research and encourages authors to meet criteria for Open Science Badges by sharing data, materials, or preregistered studies.

Similar Articles

You may also start an advanced similarity search for this article.