Abstract

In this paper, we propose two different applications in the area of V2V communications. First, we present a method for better car tracking using GPS information shared through the V2V communication and a vision system in order to support accurate positioning. To accomplish this, we propose to useparticle filtering techniques, and when GPS data is unavailable, or of poor quality, we couple GPS data with vision data collected from the vehicles. Second, we present a new simulated framework for prototyping the whole process by combiningembedded data, vision data and V2V simulations to progress toward an anti-collision application. This framework could provide a better understanding of road security by studying the impact of V2V communications, thereby improving the quality of perception systems and adding new features for “ADAS”. Our experimentations have been conducted in different scenarios on a fleet of vehicles moving and communicating in real-time conditions. The obtained results demonstrate the consistency of our method whenever the GPS is unavailable. Moreover, they prove the feasibility and the performance efficiency of such real-time multisensory fusion to provide an integrated framework for collision avoidance.

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