基于OpenVINO Toolkit的Intel处理器上神经网络推理加速分析

N. Andriyanov
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引用次数: 15

摘要

本文研究了经过训练的神经网络SSD_MobileNet_V2_COCO的性能。建议使用OpenVINO Toolkit来提高网络性能。性能评估是通过帧处理时间的倒数来计算的,帧处理时间表征了每秒处理的帧数。数据集COCO (Microsoft)作为源数据集。在本例中,从该数据集中选择了200张图像,并且在处理过程中将所有图像减小到相同的大小300x300。研究表明,使用OpenVINO使神经网络SSD_MobileNet_V2_COCO的性能平均提高了130倍。同时,与仅使用TensorFlow启动网络相比,使用OpenVINO的网络性能差异显著增加。然而,在英特尔处理器上使用这种加速器仍然是合适的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of the Acceleration of Neural Networks Inference on Intel Processors Based on OpenVINO Toolkit
The article studies the performance of a trained neural network SSD_MobileNet_V2_COCO. It is proposed to use the OpenVINO Toolkit to increase network performance. Performance evaluation is calculated by the reciprocal of the frame processing time, which characterizes the number of frames processed per second. Dataset COCO (by Microsoft) was used as the source dataset. In this case, 200 images were selected from this dataset, and during processing all images were reduced to the same sizes 300x300. Studies shown that the use of OpenVINO has increased the performance of the neural network SSD_MobileNet_V2_COCO by 130 times on average. At the same time, in contrast to starting a network using TensorFlow only, the variance of network performance using OpenVINO is significantly increased. However, the use of such an accelerator remains appropriate on Intel processors.
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