Implementasi Algoritma Discrete Cosine Transform Untuk Kompresi Citra Pada Marker-Based Tracking Augmented Reality

Main Article Content

Iwan Sutrisman
Nur Widiyasono
Heni Sulastri

Abstract

Image compression with lossy techniques removes some information so it does not match the data received. This research was conducted to determine differences in the quality of original and compressed images, specifically on mark-based tracking. Image compression is done by implementing the Discrete Cosine Transform algorithm in the MATLAB program. DCT image compression test results can compress images up to 26% of the original size without significantly reducing image quality. The assessment results shown by the markers, in Vuforia, there was no change in star ratings, while in ARCore, there was an increase in the rating of 5-40 quality scores.DCT algorithm can be applied to image compression in marker-based tracking, especially in improving the quality of markers in ARCore.


Abstrak

Kompresi citra dengan teknik lossy menghilangkan beberapa informasi sehingga tidak persis seperti data aslinya. Penelitian ini dilakukan untuk mengetahui perbedaan kualitas citra asli dan terkompresi, khususnya pada marked-based tracking. Kompresi citra dilakukan dengan mengimplementasikan algoritma Discrete Cosine Transform pada program MATLAB. Hasil pengujian kompresi citra menunjukkan bahwa algoritma DCT dapat memampatkan citra hingga 26% dari ukuran aslinya tanpa mengurangi kualitas gambar secara signifikan. Hasil pengujian rating marker menunjukkan, pada Vuforia, tidak terdapat perubahan star rating, sedangkan pada ARCore, terdapat peningkatan nilai rating sebesar 5-40 quality score. Algoritma DCT dapat diterapkan untuk kompresi citra pada marker-based tracking, khususnya dalam meningkatkan kualitas marker pada ARCore.

Article Details

Section
Articles
Author Biographies

Iwan Sutrisman, Universitas Siliwangi

Teknik Informatika, Fakultas Teknik

Nur Widiyasono, Universitas Siliwangi

Teknik Informatika, Fakultas Teknik

Heni Sulastri, Universitas Siliwangi

Teknik Informatika, Fakultas Teknik

References

Juma'in, Melita and Yuliana, "Kompresi Gambar atau Citra Menggunakan Discretecosine Transform," Jurnal Teknika, pp. 42-49, 2011.

R. C. Gonzales and R. E. Woods, Digital Image Processing (Third Edition ed.), New Jersey: Prentice Hall, 2008.

S. K. Lidya, M. A. Budiman and R. F. Rahmat, "Implementasi dan Analisis Kinerja Algoritma Arithmetic Coding dan Shannon-Fano pada Kompresi Citra BMP," SNASTIKOM, 2013.

R. T. Azuma, "A Survey of Augmented Reality," Teleoperators and Virtual Environments 6, pp. 355-385, 1997.

S. Siltanen, "Theory and Applications of Marker-Based Augmented Reality," VTT Science 3, p. 43, 2012.

PTC Inc., "Optimizing Target Detection and Tracking Stability," 12 July 2017. [Online]. Available: https://library.vuforia.com/content/vuforia-library/en/articles/Solution/Optimizing-Target-Detection-and-Tracking-Stability.html. [Accessed 20 August 2019].

Ropidin, "KOMPRESI IMAGE PADA ANDROID DENGAN METODE VECTOR QUANTIZATION BERDASARKAN PADA DISCRETE COSINE TRANSFORMATION (DCT)," Universitas Muhammadiyah Malang, Malang, 2017.

S. K. Andriaty, "Analisis Perbandingan Kinerja Algoritma Shannon-Fano, Arithmetic Coding, Dan Huffman Pada Kompresi Berkas Teks Dan Berkas Citra Digital," Universitas Sumatera Utara, Medan, 2015.

PTC, Inc., "Vuforia Target Manager," 7 February 2018. [Online]. Available: https://library.vuforia.com/articles/Training/Getting-Started-with-the-Vuforia-Target-Manager. [Accessed 20 August 2019].

Google LLC, "The arcoreimg Tool," Google Developers, 18 June 2018. [Online]. Available: https://developers.google.com/ar/develop/java/augmented-images/arcoreimg. [Accessed 20 August 2019].

W. K. Rahardja, Jalinas and C. D. Avileti, "Analisis Pengaruh Penggunaan Marker Terhadap Kemunculan Objek Pada Aplikasi Augmented Reality," Seminar Nasional Teknologi Informasi dan Multimedia, vol. 2, no. 2, pp. 19-24, 2016.

A. Pamungkas, "Cara Menghitung Nilai MSE, RMSE, dan PSNR pada Citra Digital," 4 Juni 2017. [Online]. Available: https://pemrogramanmatlab.com/2017/06/04/cara-menghitung-nilai-mse-rmse-dan-psnr-pada-citra-digital/. [Accessed 8 Oktober 2019].