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Real-Time Graph-based Point Cloud Networks on FPGAs via Stall-Free Deep Pipelining

Real-Time Graph-based Point Cloud Networks on FPGAs via Stall-Free Deep Pipelining

来源:Arxiv_logoArxiv
英文摘要

Graph-based Point Cloud Networks (PCNs) are powerful tools for processing sparse sensor data with irregular geometries, as found in high-energy physics detectors. However, deploying models in such environments remains challenging due to stringent real-time requirements for both latency, and throughput. In this work, we present a deeply pipelined dataflow architecture for executing graph-based PCNs on FPGAs. Our method supports efficient processing of dynamic, sparse point clouds while meeting hard real-time constraints. We introduce specialized processing elements for core graph operations, such as GraVNet convolution and condensation point clustering, and demonstrate our design on the AMD Versal VCK190. Compared to a GPU baseline, our FPGA implementation achieves up to 5.25x speedup in throughput while maintaining latencies below 10 μs, satisfying the demands of real-time trigger systems in particle physics experiments. An open-source reference implementation is provided.

Marc Neu、Isabel Haide、Timo Justinger、Till Rädler、Valdrin Dajaku、Torben Ferber、Jürgen Becker

电子技术概论电子元件、电子组件电子技术应用

Marc Neu,Isabel Haide,Timo Justinger,Till Rädler,Valdrin Dajaku,Torben Ferber,Jürgen Becker.Real-Time Graph-based Point Cloud Networks on FPGAs via Stall-Free Deep Pipelining[EB/OL].(2025-07-07)[2025-07-25].https://arxiv.org/abs/2507.05099.点此复制

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