SinarFe7
Vol. 7 No. 1 (2025): SinarFe7-7 2025

PENERAPAN ARSITEKTUR JST DALAM DEEP LEARNING UNTUK MENINGKATKAN AKURASI KLASIFIKASI GAMBAR DENGAN AUTOENCODER: Bahasa Indonesia

Hudaya, Citra (Unknown)
Gunawan, Ardiansyah (Unknown)
Wijaya Tri, Bintar (Unknown)



Article Info

Publish Date
28 Aug 2025

Abstract

Abstract - The development of artificial intelligence technology, particularly deep learning, has made significant contributions to digital image processing across various fields such as medicine, security, and manufacturing industries. This study aims to implement the autoencoder method within an Artificial Neural Network (ANN) architecture to optimally enhance image classification accuracy. The autoencoder is employed as an unsupervised learning technique to extract essential and relevant features from input images before passing them to the classification layer. The training process was carried out using a carefully curated image dataset, and the model was evaluated to measure classification performance based on accuracy, precision, and recall. The experimental results show that integrating an autoencoder into the ANN architecture can improve feature extraction efficiency, reduce noise, and deliver more accurate and consistent classification results compared to conventional approaches. This research demonstrates that the autoencoder can serve as a vital component in modern deep learning-based classification systems.

Copyrights © 2025






Journal Info

Abbrev

sinarFe7

Publisher

Subject

Computer Science & IT Control & Systems Engineering Electrical & Electronics Engineering

Description

Publikasi ini digunakan untuk kegiatan utama FORTEI (Forum Pendidikan Tinggi Teknik Elektro Indonesia) Regional Jawa Timur atara lain: menyelaraskan pendidikan tinggi Teknik Elektro se-Indonesia melingkupi bidang pendidikan, penelitian, dan aplikasi teknologi, Mendiskusikan topik-topik nasional ...