ACADSTAFF UGM

CREATION
Title : Improving Detection Performance of Helmetless Motorcyclists using the Combination of HOG, HOP, and LDB Descriptors
Author :

SUTIKNO (1) Prof. Drs. Agus Harjoko, M.Sc., Ph.D. (2) Afiahayati, S.Kom., M.Cs., Ph.D (3)

Date : 0 2022
Keyword : Detection, Motorcycle, Helmetless heads, HOPG-LDB, Multilayer perceptron Detection, Motorcycle, Helmetless heads, HOPG-LDB, Multilayer perceptron
Abstract : A traffic accident is one of the causes of death in the world and motorcyclists who do not wear helmets are certainly one type of likely victims of this. The number of death can be reduced by making a system capable of detecting helmetless motorcyclists. This study aimed to develop a system to detect helmetless motorcyclists. This system was divided into three subsystems of moving objects segmentation, motorcycle classification, and helmetless heads detection. The new descriptor proposed here was Histogram of Oriented Phase and Gradient - Local Difference Binary (HOPG-LDB) descriptor to improve the accuracy of motorcycle classification and helmetless heads detection. The HOPG-LDB descriptor was a combination of Histograms of Oriented Gradients (HOG), Histogram of Oriented Phase (HOP), and Local Difference Binary (LDB). The experiments were performed using a Multilayer Perceptron (MLP) classifier and 2 datasets of images that were taken from the front and rear of motorcycles. The experimental results show that the proposed new descriptor was capable of improving detection accuracy from a single descriptor and combinations of two descriptors for motorcycle classification, heads detection, and helmetless heads detection. The experimental result also shows that the descriptor we proposed produced higher accuracy than previous work.
Group of Knowledge : Ilmu Komputer
Original Language : English
Level : Internasional
Status :
Published
Document
No Title Document Type Action
1 2022022839.pdf
Document Type : Bukti Published
Bukti Published View
2 IJIES Detection of Helmetless Motorcyclist-lengkap-PAK-low.pdf
Document Type : [PAK] Full Dokumen
[PAK] Full Dokumen View