An Efficient Machine Learning Prediction Method for Vehicle Detection: Data Analytics Framework

TEM Journal Pub Date : 2024-02-27 DOI:10.18421/tem131-02
Herison Surbakti, Prashaya Fusiripong
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Abstract

The availability of transportation is considered a significant hallmark of a developed society. Since the evolution of the human species, the imperative to relocate from one location to another has been a fundamental requirement. At present, there exists a plethora of transportation options in Indonesia. However, most individuals favor road transportation due to its ease and convenience. The rise in population has led to a corresponding increase in the number of vehicles on the roadways. Hence, it presents a challenge for security authorities and governmental bodies to oversee all automobiles' mobility across various locations effectively. The present study proposes a methodology for detecting and tracking vehicles using video-based techniques. The process's initial stages involve preprocessing, including frame conversion and background subtraction. Next, the process of detecting vehicles involves the utilization of change detection and a model of body shape. Subsequently, the next stage entails the feature extraction process, focusing on extracting energy features and directional cosine. Subsequently, a technique for optimizing data is employed on the vector comprising excessively extracted features. The methodology integrates a data mining technique based on association rules, which is subsequently complemented by a random forest classification algorithm. The approach generally integrates multiple methodologies to attain effective and precise identification of automobiles in video-derived datasets.
用于车辆检测的高效机器学习预测方法:数据分析框架
交通便利被认为是发达社会的一个重要标志。自人类进化以来,从一个地方迁移到另一个地方一直是一项基本要求。目前,印度尼西亚有大量的交通方式可供选择。然而,大多数人更青睐公路运输,因为它简单方便。人口的增加导致公路上的车辆数量也相应增加。因此,如何有效监督所有汽车在不同地点的流动情况,对安全部门和政府机构来说是一项挑战。本研究提出了一种利用视频技术检测和跟踪车辆的方法。该过程的初始阶段涉及预处理,包括帧转换和背景减除。接下来,检测车辆的过程包括利用变化检测和车身形状模型。随后,下一阶段是特征提取过程,重点是提取能量特征和方向余弦。随后,在包含过量提取特征的向量上采用数据优化技术。该方法集成了基于关联规则的数据挖掘技术,随后又辅以随机森林分类算法。该方法总体上整合了多种方法,以实现对视频数据集中的汽车进行有效而精确的识别。
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