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Paper ThAT4.4

Schäfer, Jörg Peter (German Aerospace Center (DLR)), Böker, Clarissa (German Aerospace Center (DLR)), Schmälzle, Philipp Maximilian (German Aerospace Center), Junghans, Marek (German Aerospace Center)

Spatio-Temporal Alignment between Cooperative Sensor Platforms

Scheduled for presentation during the Regular Session "Collective perception and localization" (ThAT4), Thursday, September 26, 2024, 11:30−11:50, Salon 7

2024 IEEE 27th International Conference on Intelligent Transportation Systems (ITSC), September 24- 27, 2024, Edmonton, Canada

This information is tentative and subject to change. Compiled on October 8, 2024

Keywords Cooperative Techniques and Systems, Sensing, Vision, and Perception, Multi-autonomous Vehicle Studies, Models, Techniques and Simulations

Abstract

Cooperative perception, while increasingly feasible, remains a complex topic. One of its key challenges is the spatio-temporal alignment of loosely coupled sensor platforms. This is particularly difficult when independent parties maintain the platforms and only exchange information via V2X messages. In this context, we assume spatial misalignment and a signifi- cant deviation between the platform’s unsynchronized clocks. We propose a novel method to address the problem of spatio-temporal alignment. Our method is unique in that it solves this issue without prior knowledge but the detected objects provided by both sensor platforms. Our solution applies a Gaussian Mixture Model on the locally detected objects to maximize the likelihood of the objects retrieved via V2X communication. We furthermore interpolate this probability density function using tracking information of the locally detected objects, which enables us to optimize for the spatial transformation and estimate the clock’s deviation. We applied our method to synthetic and real-world data recorded at an intersection in Ingolstadt, Germany, significantly reducing the average Euclidean distance between matching objects. This practical application has not only validated our approach but also opened up possibilities for further cooperative perception tasks.

 

 

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