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A Classification-Based Non-local Means Adaptive Filtering for Speech Enhancement and Its FPGA Prototype

机译:基于分类的非本地方法自适应滤波,用于语音增强及其FPGA原型

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Non-local mean (NLM) adaptive filtering is a well-explored technique for the denoising of images and electrocardiogram signals. In NLM filtering, the signal value at a particular sample point is estimated by a weighted average of sample points over a search neighborhood. The NLM filter effectively removes the noise when there are similarities among the samples of the signal over the search neighborhood. Due to the time-varying nature of the vocal-tract system and excitation source, the magnitude and frequency of the speech signal vary over the time. Consequently, NLM filtering is not effective in removing the noise components from the speech signal. The similarity among the sample points can be improved by classifying the speech signal into different categories depending on the magnitude and frequency components. In a given speech signal, the vowel-like speech (VLS) are high-magnitude regions compared to the other non-VLS. The vowel, semivowel and diphthong sound units are collectively termed as VLS. In this work, at the first level, the noisy speech signal is classified into VLS and non-VLS for improving similarity. Next, the non-local similarity present within the VLS and the non-VLS is exploited separately for an effective speech enhancement through NLM filtering. The experimental results presented in this study show that the proposed approach provides better denoising performance when compared with the NLM filtering without speech classification as well as recently reported speech enhancement methods. The hardware architecture of the proposed approach is also designed and prototyped on FPGA.
机译:非局部均值(NLM)自适应滤波是一种用于去噪和心电图信号的勘探技术。在NLM滤波中,特定样本点处的信号值由搜索邻域的样本点的加权平均值估计。当在搜索邻域的信号的样本中存在相似性时,NLM过滤器有效地去除噪声。由于声道系统和激励源的时变性,语音信号的幅度和频率随时间而变化。因此,NLM滤波在从语音信号中移除噪声分量时无效。根据幅度和频率分量将语音信号分类为不同类别,可以改善采样点之间的相似性。在给定的语音信号中,与其他非VLS相比,元音语音(VLS)是高幅度区域。元音,半管道和二维声音单位被统称为VLS。在这项工作中,在第一级,嘈杂的语音信号被分类为VLS和非VL,以提高相似度。接下来,在VLS和非VL中存在的非局部相似性分别通过NLM滤波进行有效语音增强。本研究中提出的实验结果表明,与没有语音分类的NLM过滤相比,该方法提供了更好的去噪性能,以及最近报告的语音增强方法。建议方法的硬件架构也在FPGA上设计和原型设计。

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