There has been globally continuous growth in passenger car sizes and types over the past few decades. To assess the development of vehicular specifications in this context and to evaluate changes in powertrain technologies depending on surrounding frame conditions, such as charging stations and vehicle taxation policy, we need a detailed understanding of the vehicle fleet composition. This paper aims therefore to introduce a novel mathematical approach to segment passenger vehicles based on dimensions features using a means fuzzy clustering algorithm, Fuzzy C-means (FCM), and a non-fuzzy clustering algorithm, K-means (KM). We analyze the performance of the proposed algorithms and compare them with Swiss expert segmentation. Experiments on t...
International audienceIn this paper we propose a framework for categorization of different types of ...
Abstract: This article presents driving features analysis in order to determine superior driving fea...
It has become of key interest in the insurance industry to understand and extract information from t...
This paper aims to introduce a scientific Semi-Supervised Fuzzy C-Mean (SSFCM) clustering approach f...
This paper aims to introduce a scientific Semi-Supervised Fuzzy C-Mean (SSFCM) clustering approach f...
Vehicle classification has a significant use in traffic surveillance and management. There are many ...
Automatic classification of vehicles into different classes based on their sizes and shapes is very...
The implementation of information technology in transportation system is becoming a leading trend no...
Vehicle Classification (VC) is a key element of Intelligent Transportation Systems (ITS). Diverse ra...
Data analysis methods are important to analyze the ever-growing enormous quantity of the high dimens...
The rapid urbanization of cities has a bane in the form road accidents that cause extensive damage t...
AbstractThis paper presents a methodological approach to traffic condition recognition, based on dri...
This paper proposes the clustering of a set of busses through a fuzzy c-means clustering approach. T...
根据目前中国路桥车辆收费标准,提出了一种基于模糊模式识别的车型分类系统。车辆经过环形线圈传感器时,形成感应曲线,提取感应曲线的特征并进行特征分离,利用模糊模式识别方法对车型进行匹配分类。研究结果已在路...
Presently in most of the urban areas all over the world, due to the exponential increase in traffi...
International audienceIn this paper we propose a framework for categorization of different types of ...
Abstract: This article presents driving features analysis in order to determine superior driving fea...
It has become of key interest in the insurance industry to understand and extract information from t...
This paper aims to introduce a scientific Semi-Supervised Fuzzy C-Mean (SSFCM) clustering approach f...
This paper aims to introduce a scientific Semi-Supervised Fuzzy C-Mean (SSFCM) clustering approach f...
Vehicle classification has a significant use in traffic surveillance and management. There are many ...
Automatic classification of vehicles into different classes based on their sizes and shapes is very...
The implementation of information technology in transportation system is becoming a leading trend no...
Vehicle Classification (VC) is a key element of Intelligent Transportation Systems (ITS). Diverse ra...
Data analysis methods are important to analyze the ever-growing enormous quantity of the high dimens...
The rapid urbanization of cities has a bane in the form road accidents that cause extensive damage t...
AbstractThis paper presents a methodological approach to traffic condition recognition, based on dri...
This paper proposes the clustering of a set of busses through a fuzzy c-means clustering approach. T...
根据目前中国路桥车辆收费标准,提出了一种基于模糊模式识别的车型分类系统。车辆经过环形线圈传感器时,形成感应曲线,提取感应曲线的特征并进行特征分离,利用模糊模式识别方法对车型进行匹配分类。研究结果已在路...
Presently in most of the urban areas all over the world, due to the exponential increase in traffi...
International audienceIn this paper we propose a framework for categorization of different types of ...
Abstract: This article presents driving features analysis in order to determine superior driving fea...
It has become of key interest in the insurance industry to understand and extract information from t...