Travel Mode Identification with Smartphones
نویسندگان
چکیده
2 Xing Su 3 Computer Science Department, 4 Graduate Center, City University of New York 5 New York, NY 10016 6 [email protected] 7 +1-(347)784-4035 8 9 Hernan Caceres 10 Industrial and Systems Engineering (ISE) 11 University of Buffalo, The State University of New York 12 Buffalo, NY 14260 13 [email protected] 14 +1-(716)645-2357 15 16 Hanghang Tong 17 School of Computing, Informatics, and Decision Systems Engineering 18 Arizona State University 19 Tempe, AZ 85281 20 [email protected] 21 +1-(480)-965-3190 22 23 Qing He 24 Civil, Structural and Environmental Engineering and 25 Industrial and Systems Engineering 26 University of Buffalo, The State University of New York 27 Buffalo, NY 14260 28 [email protected] 29 30 +1-(716)645-3470 31 32 33 Submitted to TRB 94th Annual Meeting for Presentation 34 January 2015, Washington D.C. 35 36 November 15, 2014 37 38 39 Word Count: 7450 40 Abstract and Manuscript Text: 4950 41 Number of Tables and Figures: 10 (= 2500 words) 42
منابع مشابه
Travel Mode Identification with Smartphone Sensors
Travel Mode Identification with Smartphone Sensors by Xing Su Advisor: Hanghang Tong Personal trips in a modern urban society typically involve multiple travel modes. Recognizing a traveller’s transportation mode is not only critical to personal context-awareness in related applications, but also essential to urban traffic operations, transportation planning, and facility design. While the stat...
متن کاملTravel Mode Detection with Varying Smartphone Data Collection Frequencies
Smartphones are becoming increasingly popular day-by-day. Modern smartphones are more than just calling devices. They incorporate a number of high-end sensors that provide many new dimensions to smartphone experience. The use of smartphones, however, can be extended from the usual telecommunication field to applications in other specialized fields including transportation. Sensors embedded in t...
متن کاملTravel Mode Detection Based on GPS Raw Data Collected by Smartphones: A Systematic Review of the Existing Methodologies
Over the past couple of decades, Global positioning system (GPS) technology has been utilized to collect large-scale data from travel surveys. As the precise spatiotemporal characteristics of travel could be provided by GPS devices, the issues of traditional travel survey, such as misreporting and non-response, could be addressed. Considering the defects of dedicated GPS devices (e.g., need muc...
متن کاملA Comparison among various Classification Algorithms for Travel Mode Detection using Sensors’ data collected by Smartphones
Nowadays, machine learning is used widely for the purpose of detecting the mode of transportation from data collected by sensors embedded in smartphones like GPS, accelerometer and gyroscope. A lot of different classification algorithms are applied for this purpose. This study provides a comprehensive comparison among various classification algorithms on the basis of accuracy of results and com...
متن کاملReal-Time Transportation Mode Identification Using Artificial Neural Networks Enhanced with Mode Availability Layers: A Case Study in Dubai
Traditionally, departments of transportation (DOTs) have dispatched probe vehicles with dedicated vehicles and drivers for monitoring traffic conditions. Emerging assisted GPS (AGPS) and accelerometer-equipped smartphones offer new sources of raw data that arise from voluntarily-traveling smartphone users provided that their modes of transportation can correctly be identified. By introducing ad...
متن کاملDimensions of Affecting Factors on the Acceptance of Smartphones regarding Travel Information
With hand-held devices and mobile computing becoming ubiquitous in our lives, it is true that many people are interested in the usage of smartphones in the tourism industry. However, even though there are lots of studies on technology acceptance and online travel information, there is little research on smartphone acceptance for travel information. The aim of this study is to investigate the de...
متن کامل