Jurnal Pseudocode
Vol 11 No 1 (2024): Volume 11 Nomor 1 Februari 2024

Klasifikasi Jenis Cacat pada Kulit Menggunakan Arsitektur GoogLeNet

Prananda, Alifia Revan (Unknown)
Frannita, Eka Legya (Unknown)



Article Info

Publish Date
29 Feb 2024

Abstract

Deep learning has been proven to be able to provide significant contributions to several fields, including industry. It has also been proven that it has resulted in an outstanding performance for classification, detection, and even segmentation processes. In the leather industry, it also successfully gave valuable results, especially for the leather defect inspection process. This study aims to develop deep learning architecture for classifying leather defect. We used 3600 leather digital images distributed in six types of leather defects. In this study we employed GoogLeNet for classifying the data. Our experiment successfully achieved accuracy of 0.904 in training process and 0.885 in testing process. This result indicated that GoogLeNet provided powerful performance for classifying the type of leather defects.

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Journal Info

Abbrev

pseudocode

Publisher

Subject

Computer Science & IT Control & Systems Engineering Decision Sciences, Operations Research & Management Electrical & Electronics Engineering

Description

Pseudocodeis a scientific journal in the information science family that contains the results of informatics research, scientific literature on informatics, and reviews of the development of theories, methods, and application of informatics engineering science. Pseudocode is published by the ...