A Low-Power Deconvolutional Accelerator for Convolutional Neural Network Based Segmentation on FPGA: Abstract Only

Shuanglong Liu, Xinyu Niu, W. Luk
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引用次数: 3

Abstract

Convolutional Neural Networks (CNNs) based algorithms have been successful in solving image recognition problems, showing very large accuracy improvement. In recent years, deconvolution layers are widely used as key components in the state-of-the-art CNNs for end-to-end training and models to support tasks such as image segmentation. However, the deconvolution algorithms are computationally intensive which limits their applicability to real time applications. Particularly, there has been little research on the efficient implementations of deconvolution algorithms on FPGA platforms. In this work, we propose and develop fully customized deconvolution architecture for CNN-based segmentation algorithms. Besides, memory sharing between the computation modules is proposed for the FPGA-based CNN accelerator as well as for other optimization techniques. Furthermore, a hardware mapping framework is developed to automatically generate the high-throughput hardware design for any given CNN model on the target device. Finally, we implement our designs on Xilinx Zynq-7030 and the deconvolution accelerator achieves a performance of 25.6 GOPS under 200MHz working frequency and a performance density of 0.064 GOPS/DSP using 32-bit quantization, which significantly outperforms previous designs on FPGAs. A real-time application of scene segmentation on Cityscapes Dataset is used to evaluate our CNN accelerator on Zynq-7030 board, and the system achieves a performance of 57.2 GOPS and 0.143 GOPS/DSP using 16-bit quantization, and supports up to 2 frames per second for 512x512 image inputs with a power consumption of only 3.2W.
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基于FPGA的卷积神经网络分割低功耗反卷积加速器:仅摘要
基于卷积神经网络(cnn)的算法已经成功地解决了图像识别问题,显示出非常大的精度提高。近年来,反卷积层被广泛用作最先进的cnn的关键组件,用于端到端训练和模型,以支持图像分割等任务。然而,反卷积算法的计算量很大,这限制了它们在实时应用中的适用性。特别是,关于在FPGA平台上有效实现反卷积算法的研究很少。在这项工作中,我们提出并开发了基于cnn的分割算法的完全定制的反卷积架构。此外,对于基于fpga的CNN加速器以及其他优化技术,提出了计算模块之间的内存共享。此外,开发了一个硬件映射框架,可以自动生成目标设备上任意给定CNN模型的高吞吐量硬件设计。最后,我们在Xilinx Zynq-7030上实现了我们的设计,反卷积加速器在200MHz工作频率下的性能为25.6 GOPS,使用32位量化的性能密度为0.064 GOPS/DSP,显著优于以前在fpga上的设计。在Zynq-7030板上对CNN加速器进行了场景分割的实时应用,系统采用16位量化实现了57.2 GOPS和0.143 GOPS/DSP的性能,支持高达2帧/秒的512x512图像输入,功耗仅为3.2W。
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