APPLICATION OF SPEED UP ROBUST FEATURES (SURF) AND FEATURES FROM ACCELERATED SEGMENT TEST (FAST) FOR INTRODUCTION OF PLACE

  • Mhd. Furqan Universitas Islam Negeri Sumatera Utara
  • Rakhmat Kurniawan Universitas Islam Negeri Sumatera Utara
  • Mey Hendra Putra Sirait Universitas Islam Negeri Sumatera Utara
Keywords: SURF, FAST, Image Recognition, Precision, Recal

Abstract

With the current technology that is starting to develop rapidly, it can match an image with another image. In recognizing an image, there needs to be a process that will be carried out in image matching, but current image matching is still comparing pixels between two images. To compare between images, the color and resolution and shape of the image pixels affect the recognition results in an image. Therefore, to deal with this problem, the algorithms that can be used in the work process of this program are the Speed ​​Up Robust Features (SURF) algorithm and Features from Accelerated Segment Test (FAST). FAST is a method for determining the angle that is in an image while the SURF algorithm can describe the features that exist in an image so that image matching no longer matches between pixels but based on the descriptors that have been generated and the matched results will be listed on the database, using the SURF algorithm , there is no need to worry about the resolution, color, and shape of the image to be matched. Tests that were carried out were still successful with a precision value of 0.9, which means that the value of successful matching is 9% and with a recall value of 100% and a value that has reached 100% means that the number of points is similar to the number of points that have been matched

Downloads

Download data is not yet available.

References

[1] Andono,Pulung Nurtantio., dkk. 2017., Pengolahan Citra Digital. (1)., Yogyakarta : CV Andi.
[2] Aditya Rizki Yudiantika., Evaluasi Metode Pelacakan tanpa Marker pada Metaio SDK untuk pengembangan aplikasi kuis berbasis Augmented Reality di Museum. Jurnal Teknik Elektro dan Teknik Informasi. ISSN 2302-3805,: Hal 1-6.
[3] Basuki, A., 2006. Grafika Komp uter: Teori dan Implementasi. Yogyakarta: Andi.
[4] Bay, H., Tinne, T. & Luc, v. G., 2006., SURF : Speeded Up Robust Features. Analysis of the SURF Method. 5(43): 176.
[5] Faizal Zuli., 2018, Rancangan Bangun Augmented dan Virtual Reality Menggunakan Algoritma FAST Sebagai Media Informasi 3D, Jurnal Algoritma,Logika dan Komputasi., e-ISSN 2621-9840 | p-ISSN 2620 – 620X., 1(2): 94-104.
[6] Firma Firmansyah Adi,dkk., 2017., Implementasi Algoritam Speed Up Robust Features (SURF) Pada Pengenalan Rambu-rambu Lalu Lintas, Jurnal Teknik Informatika dan Sistem Informasi., e-ISSN 2443-2229., 3(3): 575-587.
[7] Felix Pidha Hilman., 2015., Perbandingan Metode SURF dan Sifat dalam Sistem Indentifikasi Tanda Tangan, Jurnal Teknik Telekomunikasi., e-ISSN 2355-9465., 2(2): 2467-2481.
[8] Johar Nur Lin, M.Niswar, Ardiaty Arief., 2017., Sistem Deteksi dan Ektraksi Keypoint dari Bagian Jenis Sayap Nyamuk Dengan Menggunakan Algoritma Speed Up Robust Features, Jurnal Sains dan Teknologi., ISSN 2303-3614., 6(2): 190-196.
[9] Kurniawan Rakhmat., 2017., Rancangan Bangunan Aplikasi Pengaman Isi File Dokumen Dengan Algoritma RSA, Jurnal Ilmu Komputer., ISSN 2598-6341., 1(1): 46-52.
[10] Leon, S. J., 1998., Linear Algebra With Application. (5)., New Jersey: Prentice Hall.
[11] Munir, R., 2004., Pengolahan citra digital dengan pendekatan algoritmik., Bandung: Informatika.
Published
2020-12-10
How to Cite
Furqan, M., Kurniawan, R., & Hendra Putra Sirait, M. (2020). APPLICATION OF SPEED UP ROBUST FEATURES (SURF) AND FEATURES FROM ACCELERATED SEGMENT TEST (FAST) FOR INTRODUCTION OF PLACE. INFOKUM, 9(1,Desember), 62-68. Retrieved from http://infor.seaninstitute.org/index.php/infokum/article/view/86