Large-scale monocular FastSLAM2.0 acceleration on an embedded heterogeneous architecture

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Abstract

Simultaneous localization and mapping (SLAM) is widely used in many robotic applications and autonomous navigation. This paper presents a study of FastSLAM2.0 computational complexity based on a monocular vision system. The algorithm is intended to operate with many particles in a large-scale environment. FastSLAM2.0 was partitioned into functional blocks allowing a hardware software matching on a CPU-GPGPU-based SoC architecture. Performances in terms of processing time and localization accuracy were evaluated using a real indoor dataset. Results demonstrate that an optimized and efficient CPU-GPGPU partitioning allows performing accurate localization results and high-speed execution of a monocular FastSLAM2.0-based embedded system operating under real-time constraints.

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Abouzahir, M., Elouardi, A., Bouaziz, S., Latif, R., & Tajer, A. (2016). Large-scale monocular FastSLAM2.0 acceleration on an embedded heterogeneous architecture. Eurasip Journal on Advances in Signal Processing, 2016(1). https://doi.org/10.1186/s13634-016-0386-3

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