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611.
针对货车车号的字体不规则、单字有断裂的特点,提出基于图像预处理的动态字符分割和提取算法,准确地对车号图像进行车号区域提取和车号单字分割.利用Hilditch细化算法对单字进行细化,提取出能表征数字的结构特征向量.设计出BP人工神经网络,数字的结构特征向量作为BP网络的输入,用经过训练的BP网络进行货车车号的识别.  相似文献   
612.
Online predictions of bus arrival times have the potential to reduce the uncertainty associated with bus operations. By better anticipating future conditions, online predictions can reduce perceived and actual passenger travel times as well as facilitate more proactive decision making by service providers. Even though considerable research efforts were devoted to the development of computationally expensive bus arrival prediction schemes, real-world real-time information (RTI) systems are typically based on very simple prediction rules. This paper narrows down the gap between the state-of-the-art and the state-of-the-practice in generating RTI for public transport systems by evaluating the added-value of schemes that integrate instantaneous data and dwell time predictions. The evaluation considers static information and a commonly deployed scheme as a benchmark. The RTI generation algorithms were applied and analyzed for a trunk bus network in Stockholm, Sweden. The schemes are assessed and compared based on their accuracy, reliability, robustness and potential waiting time savings. The impact of RTI on passengers waiting times are compared with those attained by service frequency and regularity improvements. A method which incorporates information on downstream travel conditions outperforms the commonly deployed scheme, leading to a 25% reduction in the mean absolute error. Furthermore, the incorporation of instantaneous travel times improves the prediction accuracy and reliability, and contributes to more robust predictions. The potential waiting time gains associated with the prediction scheme are equivalent to the gains expected when introducing a 60% increase in service frequency, and are not attainable by service regularity improvements.  相似文献   
613.
4D trajectory prediction is the core element of future air transportation system, which is intended to improve the operational ability and the predictability of air traffic. In this paper, we introduce a novel hybrid model to address the short-term trajectory prediction problem in Terminal Manoeuvring Area (TMA) by application of machine learning methods. The proposed model consists of two parts: clustering-based preprocessing and Multi-Cells Neural Network (MCNN)-based prediction. Firstly, in the preprocessing part, after data cleaning, filtering and data re-sampling, we applied principal Component Analysis (PCA) to reduce the dimension of trajectory vector variable. Then, the trajectories are clustered into several patterns by clustering algorithm. Using nested cross validation, MCNN model is trained to find out the appropriate prediction model of Estimated Time of Arrival (ETA) for each individual cluster cell. Finally, the predicted ETA for each new flight is generated in different cluster cells classified by decision trees. To assess the performance of MCNN model, the Multiple Linear Regression (MLR) model is proposed as the comparison learning model, and K-means++ and DBSCAN are proposed as two comparison clustering models in preprocessing part. With real 4D trajectory data in Beijing TMA, experimental results demonstrate that our proposed model MCNN with DBSCAN in preprocessing is the most effective and robust hybrid machine learning model, both in trajectory clustering and short-term 4D trajectory prediction. In addition, it can make an accurate trajectory prediction in terms of Mean Absolute Error (MAE) and Root Mean Squared Error (RMSE) with regards to comparison models.  相似文献   
614.
Advances in Information and Communication Technologies (ICT) allow the transportation community to foresee dramatic improvements for the incoming years in terms of a more efficient, environmental friendly and safe traffic management. In that context, new ITS paradigms like Cooperative Systems (C-ITS) enable an efficient traffic state estimation and traffic control. C-ITS refers to three levels of cooperation between vehicles and infrastructure: (i) equipped vehicles with Advanced Driver Assistance Systems (ADAS) adjusting their motion to surrounding traffic conditions; (ii) information exchange with the infrastructure; (iii) vehicle-to-vehicle communication. Therefore, C-ITS makes it possible to go a step further in providing real time information and tailored control strategies to specific drivers. As a response to an expected increasing penetration rate of these systems, traffic managers and researchers have to come up with new methodologies that override the classic methods of traffic modeling and control. In this paper, we discuss some potentialities of C-ITS for traffic management with the methodological issues following the expansion of such systems. Cooperative traffic models are introduced into an open-source traffic simulator. The resulting simulation framework is robust and able to assess potential benefits of cooperative traffic control strategies in different traffic configurations.  相似文献   
615.
介绍了一种基于关系代数的句法分析单元设计.尝试通过与关系代数模型紧密集成,利用关系数据库系统能够组织和快速检索海量数据的特点,提高句法分析单元的处理复杂文法样本的能力,同时减轻用户的编码负担.在此框架中,部分推导树集合被表示为关系;推理规则集被表示为扩展的关系代数运算.给出了算法实现所需的数据结构和控制结构.从而将句法分析算法完全表示为数据库系统中的一个关系运算过程.最后通过原型系统验证了该方法的可行性.  相似文献   
616.
为使混行交通流下智能网联车辆(Connected and Automated Vehicles, CAV)实现对人工驾驶车辆(Human-driven Vehicle, HV)前照灯灯语意图(Vehicle Headlights Intention, VHI) 的识别,弥补车对车(Vehicle to Vehicle, V2V)和鸣笛意图识别技术的不足,更好地与HV交互沟通,提出CAV对HV的VHI识别模型.模型包括:灯光感知、光数据处理、VHI识别3个模块,灯光感知模块通过RGB(Red-Green-Blue, RGB)和HSV(Hue-Saturation-Value, HSV)颜色空间感知前照灯(Vehicle Headlights, VH),采用KLT(Kanade-Lucas-Tomasi Tracking,KLT)和车辆匹配算法定位跟踪发出灯语的HV;光数据处理模块采用光通道增益算法计算光辐射通量变化; VHI识别模块基于双层隐马尔可夫模型(Double-layer Hidden Markov Model,DHMM)辨识VH 闪烁次数和HV行驶状态,实现VHI识别.在3种灯语示意典型场景下的实验结果表明:1 s内 VH感知准确率为96.8%,定位跟踪精度小于1°,VHI识别率为96.6%,满足混行交通环境下 CAV对HV驾驶意图的识别要求,基本保证实时性,为混行交通流中CAV自动驾驶决策提供理论依据.  相似文献   
617.
With the advent of emerging wireless communication technologies, tremendous efforts have been put on promoting the safety and efficiency of transportation services by developing innovative applications. In particular, there has been significant interest in accessing information stored at RSUs (Roadside Units). The unique characteristics in vehicular networks, such as dynamic traffic factors including vehicle arrival rate, dwell time and data access patterns, bring us new challenges on data dissemination. This work dedicates to the investigation of timely and adaptive data dissemination in the dynamically changing traffic environment. Firstly, we derive an analytical model to explore and examine the effects of the dynamic traffic factors. In light of the theoretical results, an on-line scheduling algorithm is proposed for adaptive data dissemination. Finally, we evaluate performance of the new algorithm in a variety of circumstances. The simulation results demonstrate satisfactory performance of the proposed algorithm.  相似文献   
618.
地下管线测漏仪中数据的采集和预处理   总被引:1,自引:0,他引:1  
在对管线渗漏信号进行分析的基础上 ,利用DSP芯片TMS32 0VC5 40 2和模数转换器CS5 36 0实现了数据的高精度采集。同时设计了基于渗漏信号特征的数字滤波器 ,对采集后的信号进行有效预处理。  相似文献   
619.
结合当今比较流行的计算机技术,研究了一种新型的基于浏览器/服务器(Browser/Server,简称B/S)模式的机车信号检测数据分析系统,给出了系统设计原理和实现方法.  相似文献   
620.
以非接触操控技术与增强现实技术的结合为基础,交互增强与智能服务分别作为技术和服务联动的两大动力,正在推动车联网的新变革。除了政策的有利条件,声控技术、手势控制、虚拟现实等关键技术均取得重大进展。在难得的发展机遇面前,以广东翼卡为代表的业界各方正应当通过全新的车联网平台和服务,提升行业产业化水平,创造丰富多彩、智能互联的未来生活。  相似文献   
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