基于深度学习的动作识别的堆叠卷积独立子空间分析加速器

Lu He, Yan Luo, Yu Cao
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引用次数: 3

摘要

动作识别一直是多媒体计算和机器视觉领域的研究热点。深度学习与堆叠卷积独立子空间分析(堆叠卷积独立子空间分析)相结合的最新进展在几个公共可用数据集上取得了优于所有先前发表的结果的性能。不幸的是,大规模部署这种基于深度学习的新方法的一个主要问题是高维数据训练的不可接受的延迟。在本文中,我们提出了一种新的硬件加速器,可以大大减少基于深度学习的动作识别的训练时间。具体来说,我们提出的方法侧重于加速卷积堆叠ISA算法,这是基于深度学习的动作识别算法的核心组件。我们设计了并行管道、数据并行和查找表来加快算法的速度。使用由通用处理器和FPGA组成的嵌入式异构平台,与仅使用软件实现相比,我们能够实现堆叠ISA训练高达10倍的加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerator of Stacked Convolutional Independent Subspace Analysis for Deep Learning-Based Action Recognition
Action recognition has been a research challenge in multimedia computing and machine vision. Recent advances in deep learning combined with stacked convolutional Independent Subspace Analysis (ISA) has achieved a better performance superior to all previously published results on several public available data sets. Unfortunately, one major issue in large-scale deployment of this new deep learning-based approach is the unacceptable latency of training with high-dimension data. In this paper, we propose a new hardware accelerator that can reduce the training time substantially for deep learning-based action recognition. Specifically, our proposed approach focuses on accelerating the convolutional stacked ISA algorithm, the core components of the deep learning-based action recognition algorithms. We design parallel pipelines, data parallelisms and look-up table to speed up the algorithm. With an embedded heterogeneous platform consisting of a general purpose processor and a FPGA, we are able to achieve up to 10X speedup for stacked ISA training compared to a software-only implementation.
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