Utilization of the RANSAC Method to Validate the Reconstruction of 2-Dimensi Objects Using LiDAR

  • Tri Mulyana Universitas Nurtanio Bandung
  • Arief Suryadi Satyawan Badan Riset dan Inovasi Nasional
  • Sri Desy Siswanti Universitas Nurtanio Bandung
Keywords: Random Sample Consensus (RANSAC), SampleSize, MaxDistance, Regresi Linear.

Abstract

This research is a development of Random Sample Consensus (RANSAC) technology which is one of the facilities in autonomous type electric vehicles. Random Sample Consensus (RANSAC) is a two-dimensional technology that detects the presence of objects so that the vehicle can respond in the form of braking or maneuvering to avoid these objects. In the application of RANSAC, it is often constrained by anomaly data which affects the accuracy in the detection of actual objects. In this study, it aims to overcome anomaly data. In this study, it was assisted by MATLAB software which was used for analysis, comparison and programming whose results were entered into Excel as a dataset for the Reconstruction of 2-Dimensional Objects Using RANSAC Modifications The result data will be processed using the Linear Regression method or prediction based on previous data and using the Least Square method or the Least Squares method. The results of the study used samplesize and maxdistance which varied, from the first test getting 92.8% of the data declared good and the second test getting 58.33% of the data declared good. The results of this study show that the reconstruction of 2-Dimensional objects from LiDAR data can be validated using the RANSAC method, the Robust Fit line and the Least Square Fit from the image can be changed by setting SampleSize and MaxDistance, in the test results that have been carried out the tested data are declared successful, and the amount of data and the determination of the amount of data can affect the results in the study.

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References

Merlyn Inova Christie Latukolan. 2020. Penerapan LiDAR Untuk Pemetaan Ruangan Berbasis Metode RANSAC.

https://repository.telkomuniversity.ac.id/pustaka/164604/penerapan-lidar-untuk-pemetaan-ruangan-berbasis-metode-ransac.html; Dikunjungi 6 Juli 2022.

Wang, Xiangdong, Yunfei Cai, dan Tingmin Shi. 2015. “Road Edge Detection Based on Improved RANSAC and 2D LIDAR Data.” In ICCAIS 2015 - 4th International Conference on Control, Automation and Information Sciences, 191–96. Institute of Electrical and Electronics Engineers.

Gramedia Blog. 2020. Random Sampling: Pengertian, Jenis, Kelebihan dan Kekurangan.

http://www.gramedia.com/literasi/random-sampling/#Pengertian_Random_Sampling; Dikunjungi 7 Juli 2022

Berita Unik. 2011. Perkalian MATRIK 2x2: cara mengerjakan dan contoh soal.

https://kumparan.com/berita-unik/perkalian-matriks-2x2-cara-mengerjakan-dan-contoh-soal-1vpZ1ckkOpf/full; dikunjungi 7 Juli 2022.

Advernesia. 2020. Bilangan Acak Pada MATLAB (rand, randn, dan randi). https://www.advernesia.com/blog/matlab/pembangkitan-bilangan-acak-pada-matlab/ ; dikunjungi 8 juli 2022.

Sophia Maulidatul Adha. 2022. Vektor Matematika – Pengertian, Rumus, dan Contoh Soal.

https://akupintar.id/info-pintar/-/blogs/vektor-matematika-pengertian-rumus-dan-contoh-soal; Dikunjungi 9 Juli 2022.

Kholida Qothrunnada. 2021. Pengertian Mean, Median, Modus, dan Cara Menghitungnya.

https://www.detik.com/edu/detikpedia/d-5813307/pengertian-mean-median-modus-dan-cara-menghitungnya; Dikunjungi 9 Juli 2022.

Kucinggila. 2017. Pengertian Dan Contoh Fungsi Perulangan For Dalam Bahasa Pemrograman C++.

http://kucing-gilak.blogspot.com/2017/02/for-berfungsi-utuk-mengulang.html; Dikunjungi 9 Juli 2022.

Rosyid, Mas’ud Abdur, Yusuf Suhaimi Daulay, Denden Mohamad Arifin, Ardian Infantono, Arief Suryadi Satyawan, Ema Ema, dan Raden Aditya Satria Nugraha. 2021. “Pengembangan Algoritma Pereduksi Noise Pada Point Cloud Data LiDAR Dua Dimensi Untuk Aplikasi Kendaraan Listrik Otonom Sederhana.” Prosiding Seminar Nasional Sains Teknologi Dan Inovasi Indonesia (SENASTINDO) 3 (December). Akademi Angkatan Udara: 145–56.

Uti Solichah. 2016. Pendeteksian Gawang Menggunakan Algoritma RANSAC Pada Platfomdarwin-Op Berbasis Peraturan KRSBI 2012.

Published
2022-10-31
How to Cite
Mulyana, T., Satyawan, A. S., & Siswanti, S. D. (2022). Utilization of the RANSAC Method to Validate the Reconstruction of 2-Dimensi Objects Using LiDAR. Prosiding Seminar Nasional Sains Teknologi Dan Inovasi Indonesia (SENASTINDO), 4, 283-294. https://doi.org/10.54706/senastindo.v4.2022.205

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