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Understanding Driver-Passenger Interactions in Vehicular Crowdsensing

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TLDR
Turn2Earn as discussed by the authors, a generic vehicular crowdsensing system that incentivizes drivers to take specific routes for data collection, was deployed with 13 auto-rickshaw drivers for two weeks in Bangalore.
Abstract
Smart city projects collect data on urban environments to identify problems, inform policymaking, and boost citizen engagement. Typically, this data is collected by static sensors placed around the city, which is not ideal for spatiotemporal needs of certain sensing applications such as air quality monitoring. Vehicular crowdsensing is an upcoming approach that addresses this problem by utilizing vehicles' mobility to collect fine-grained city-scale data. Prior work has mainly focused on designing vehicular crowdsensing systems and related components, including incentive schemes, vehicle selection, and application-specific sensing, without understanding the motivations and challenges faced by drivers and passengers, one of the two key stakeholders of any vehicular crowdsensing solution. Our work aims to fill this gap. To understand drivers' and passengers' perspectives, we developed Turn2Earn, a generic vehicular crowdsensing system that incentivizes drivers to take specific routes for data collection. Turn2Earn system was deployed with 13 auto-rickshaw drivers for two weeks in Bangalore, India. Our drivers took 709 trips using Turn2Earn covering 79.2% of the city's grid cells. Interviews with 13 drivers and 15 passengers revealed innovative information-based strategies adopted by the drivers to convince passengers in taking alternative routes, and passengers' altruism in supporting the drivers. We uncovered novel insights, including viability of offered routes due to road closure, issues with electric vehicles, and selection bias among the drivers. We conclude with design recommendations to inform the future of vehicular crowdsensing, including engaging and incentivizing passengers, and criticality-based reward structure.

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Journal ArticleDOI

Teletraffic analysis of a mobile crowdsensing system: The pedestrian-to-vehicle scenario

TL;DR: In this paper , the authors analyze the data acquisition phase, where pedestrians opportunistically transmit to vehicles to further disseminate it in the city according to their trajectory, and propose an Erlang distribution to model the vehicles' dwelling times and develop a Markov chain accordingly.
References
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Proceedings ArticleDOI

Nericell: rich monitoring of road and traffic conditions using mobile smartphones

TL;DR: Nericell is presented, a system that performs rich sensing by piggybacking on smartphones that users carry with them in normal course, and addresses several challenges including virtually reorienting the accelerometer on a phone that is at an arbitrary orientation, and performing honk detection and localization in an energy efficient manner.
Proceedings ArticleDOI

The pothole patrol: using a mobile sensor network for road surface monitoring

TL;DR: This paper describes a system and associated algorithms to monitor this important civil infrastructure using a collection of sensor-equipped vehicles, which they call the Pothole Patrol (P2), which uses the inherent mobility of the participating vehicles, opportunistically gathering data from vibration and GPS sensors, and processing the data to assess road surface conditions.
Journal ArticleDOI

Orienteering Problem: A survey of recent variants, solution approaches and applications

TL;DR: The most recent applications of the OP, such as the Tourist Trip Design Problem and the mobile-crowdsourcing problem are discussed.
Proceedings ArticleDOI

ParkNet: drive-by sensing of road-side parking statistics

TL;DR: The design, implementation and evaluation of ParkNet, a mobile system comprising vehicles that collect parking space occupancy information while driving by, are presented and it is found that parking spot counts are 95% accurate and occupancy maps can achieve over 90% accuracy.
Proceedings ArticleDOI

Real-time air quality monitoring through mobile sensing in metropolitan areas

TL;DR: A vehicular-based mobile approach for measuring fine-grained air quality in real-time and two cost effective data farming models -- one that can be deployed on public transportation and the second a personal sensing device are proposed.
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