An FPGA-Based Hardware Accelerator for CNNs Using On-Chip Memories Only: Design and Benchmarking with Intel Movidius Neural Compute Stick

Author:

Dinelli Gianmarco1ORCID,Meoni Gabriele1ORCID,Rapuano Emilio1ORCID,Benelli Gionata2ORCID,Fanucci Luca1ORCID

Affiliation:

1. Department of Information Engineering, University of Pisa, Pisa 56122, Italy

2. IngeniArs, Pisa 56121, Italy

Abstract

During the last years, convolutional neural networks have been used for different applications, thanks to their potentiality to carry out tasks by using a reduced number of parameters when compared with other deep learning approaches. However, power consumption and memory footprint constraints, typical of on the edge and portable applications, usually collide with accuracy and latency requirements. For such reasons, commercial hardware accelerators have become popular, thanks to their architecture designed for the inference of general convolutional neural network models. Nevertheless, field-programmable gate arrays represent an interesting perspective since they offer the possibility to implement a hardware architecture tailored to a specific convolutional neural network model, with promising results in terms of latency and power consumption. In this article, we propose a full on-chip field-programmable gate array hardware accelerator for a separable convolutional neural network, which was designed for a keyword spotting application. We started from the model implemented in a previous work for the Intel Movidius Neural Compute Stick. For our goals, we appropriately quantized such a model through a bit-true simulation, and we realized a dedicated architecture exclusively using on-chip memories. A benchmark comparing the results on different field-programmable gate array families by Xilinx and Intel with the implementation on the Neural Compute Stick was realized. The analysis shows that better inference time and energy per inference results can be obtained with comparable accuracy at expenses of a higher design effort and development time through the FPGA solution.

Publisher

Hindawi Limited

Subject

Hardware and Architecture

Reference40 articles.

1. A machine learning based intelligent vision system for autonomous object detection and recognition

2. Advances and perspective on applications of deep learning in visual object detection;H. Zhang;Acta Automatica Sinica,2017

3. Deep object recognition across domains based on adaptive extreme learning machine

4. 3D object recognition based on a geometrical topology model and extreme learning machine

5. Exploring critical aspect of CNN-based keyword spotting. A phocnet study;G. Retsinas

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