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Performance Analysis of Real-Time DNN Inference on Raspberry Pi

机译:Raspberry Pi上实时DNN推理的性能分析

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Deep Neural Networks (DNNs) have emerged as the reference processing architecture for the implementation of multiple computer vision tasks. They achieve much higher accuracy than traditional algorithms based on shallow learning. However, it comes at the cost of a substantial increase of computational resources. This constitutes a challenge for embedded vision systems performing edge inference as opposed to cloud processing. In such a demanding scenario, several open-source frameworks have been developed, e.g. Caffe, OpenCV, TensorFlow, Theano, Torch or MXNet. All of these tools enable the deployment of various state-of-the-art DNN models for inference, though each one relies on particular optimization libraries and techniques resulting in different performance behavior. In this paper, we present a comparative study of some of these frameworks in terms of power consumption, throughput and precision for some of the most popular Convolutional Neural Networks (CNN) models. The benchmarking system is Raspberry Pi 3 Model B, a low-cost embedded platform with limited resources. We highlight the advantages and limitations associated with the practical use of the analyzed frameworks. Some guidelines are provided for suitable selection of a specific tool according to prescribed application requirements.
机译:深度神经网络(DNN)被出现为用于实现多台计算机视觉任务的参考处理架构。基于浅学习的传统算法,它们达到了更高的准确性。但是,它以大量增加计算资源的成本。这构成了执行边缘推断的嵌入式视觉系统的挑战,而不是云处理。在如此苛刻的情况下,已经开发了几个开源框架,例如, Caffe,Opencv,Tensorflow,Theano,火炬或Mxnet。所有这些工具都可以部署各种最先进的DNN模型进行推断,但是每个工具依赖于特定的优化库和技术,从而导致不同的性能行为。在本文中,我们对一些最受欢迎的卷积神经网络(CNN)模型的功耗,吞吐量和精度的一些比较研究了一些这些框架。基准系统是Raspberry PI 3型号B,一个低成本的嵌入式平台,资源有限。我们突出了与分析的框架的实际使用相关的优点和限制。根据规定的应用要求提供了适用于特定工具的一些指导方针。

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