基于fpga的浮点离散小波变换计算算法框架

Punam U. Chati
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引用次数: 0

摘要

离散小波变换已经在信号和图像处理应用的发展中占据了研究的前沿地位。为此,本文提出了利用Harr小波计算浮点离散小波变换的硬件设计工作。所提出的硬件采用VHDL实现,并在门级进行了器件设计。这导致了一个更容易合成的设计。硬件采用Xilinx Virtex-4设备合成。本文介绍了使用32位浮点单元进行DWT计算的硬件制作。由于除Harr小波外的所有小波的系数都是浮点表示的,因此在提出的硬件中加入了一个32位的FPU。通常,合成工具在设计内存时效率不高,并且提议的硬件由两个16K X 32位RAM组成。因此,在该硬件的合成过程中面临和解决了许多问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Framework for FPGA–Based Floating Point Discrete-Wavelet Transform Computation Algorithm
The discrete wavelet transform has taken its place at the forefront of research for the development of signal and image processing applications. Hence this paper is proposed on the work of design of hardware for the computation of Floating Point Discrete Wavelet Transform using Harr wavelet. The proposed hardware was implemented using VHDL and components were designed at the gate level. This resulted in an easier synthesizable design. The hardware was synthesized using Xilinx Virtex-4 device. This paper gives us an insight into the making of hardware for computation of DWT using a 32 bit Floating Point Unit. Since all the wavelets except Harr wavelet have their coefficients in floating point representation, a 32 bit FPU was incorporated into the proposed hardware. Typically, synthesis tools are not efficient in designing a memory and the proposed hardware was consisting of two 16K X 32 bit RAM’s. Hence many problems had been faced and solved during the synthesis of this hardware.
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