Benchmarking the NXP i.MX8M+ neural processing unit: smart parking case study

IF 0.1 Q4 MULTIDISCIPLINARY SCIENCES
Edgar Chaves-González, Luis G. León-Vega
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引用次数: 0

Abstract

Nowadays, deep learning has become one of the most popular solutions for computer vision, and it has also included the Edge. It has influenced the System-on-Chip (SoC) vendors to integrate accelerators for inference tasks into their SoCs, including NVIDIA, NXP, and Texas Instruments embedded systems. This work explores the performance of the NXP i.MX8M Plus Neural Processing Unit (NPU) as one of the solutions for inference tasks. For measuring the performance, we propose an experiment that uses a GStreamer pipeline for inferring license plates, which is composed of two stages: license plate detection and character inference. The benchmark takes execution time and CPU usage samples within the metrics when running the inference serially and parallel. The results show that the key benefit of using the NPU is the CPU freeing for other tasks. After offloading the license plate detection to NPU, we lowered the overall CPU consumption by 10x. The performance obtained has an inference rate of 1 Hz, limited by the character inference.
对标恩智浦i.MX8M+神经处理单元:智能停车案例研究
如今,深度学习已经成为计算机视觉最流行的解决方案之一,它也包括Edge。它影响了片上系统(SoC)供应商将用于推理任务的加速器集成到他们的SoC中,包括NVIDIA, NXP和德州仪器的嵌入式系统。这项工作探讨了NXP i.MX8M Plus神经处理单元(NPU)作为推理任务解决方案之一的性能。为了测试性能,我们提出了一个使用GStreamer管道进行车牌推断的实验,该实验包括两个阶段:车牌检测和字符推理。在串行和并行运行推理时,基准测试在指标中获取执行时间和CPU使用示例。结果表明,使用NPU的主要好处是可以为其他任务腾出CPU。在将车牌检测任务卸载给NPU后,我们将总体CPU消耗降低了10倍。所获得的性能具有1 Hz的推理率,受字符推理的限制。
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来源期刊
Tecnologia en Marcha
Tecnologia en Marcha MULTIDISCIPLINARY SCIENCES-
自引率
0.00%
发文量
93
审稿时长
28 weeks
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