F. Canbay, Vecdi Emre Levent, Gorkem Serbes, H. F. Ugurdag, Sezer Gören, N. Aydin
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引用次数: 2
摘要
生物医学信号(BSs)提供了关于我们身体正常状态和固有不规则性的信息,由于生理系统的时变行为,生物医学信号被期望具有非平稳特性。傅里叶变换和短时傅里叶变换分别是固定频率和时频分辨率下广泛使用的频率和时频分析方法。然而,为了从非平稳BSs中获得相关信息,需要一种适当的时频分辨率可调的分析方法。小波变换可以作为一个数学显微镜,它的时频分辨率可以根据信号的不同部分进行调整。离散小波变换(DWT)是对经典小波变换的一种快速、离散化实现,但由于存在混叠、方向性不足和移位方差等缺点,使得DWT在BSs处理中表现有限。在文献中,将DWT的改进版本称为对偶树复小波变换(Dual Tree Complex Wavelet Transform, DTCWT)用于分析BSs,并取得了很大的成功。在本研究中,考虑到嵌入式系统技术的进步和便携式医疗设备对基于小波的实时特征提取或去噪系统的需求,DTCWT作为一个子系统在现场可编程门阵列中实现。在提出的硬件架构中,对于每个数据输入通道,DTCWT仅使用一个加法器和一个乘法器来实现。此外,考虑到生物医学数据采集系统的多通道输出,该架构设计具有N通道并行运行的能力。
An area efficient real time implementation of dual tree complex wavelet transform in field programmable gate arrays
Biomedical signals (BSs), which give information about the normal condition and also the inherent irregularities of our body, are expected to have non-stationary character due to the time-varying behavior of physiological systems. The Fourier transform and the short time Fourier transform are the widely used frequency and time-frequency analysis methods for extracting information from BSs with fixed frequency and time-frequency resolution respectively. However, in order to derive relevant information from non-stationary BSs, an appropriate analysis method which exhibits adjustable time-frequency resolution is needed. The wavelet transform (WT) can be used as a mathematical microscope in which the time-frequency resolution can be adjusted according to the different parts of the signal. The discrete wavelet transform (DWT) is a fast and discretized implementation for classical WT. Due to the aliasing, lack of directionality and shift-variance disadvantages, the DWT exhibits limited performance in the process of BSs. In literature, an improved version of the DWT, which is named as Dual Tree Complex Wavelet Transform (DTCWT), is employed in the analysis of BSs with great success. In this study, considering the improvements in embedded system technology and the needs for wavelet based real-time feature extraction or de-noising systems in portable medical devices, the DTCWT is implemented as a sub-system in field programmable gate arrays. In proposed hardware architecture, for every data input-channel, DTCWT is implemented by using only one adder and one multiplier. Additionally, considering the multi-channel outputs of biomedical data acquisition systems, this architecture is designed with the capability of running in parallel for N channels.