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Recognizing the message and the messenger: biomimetic spectral analysis for robust speech and speaker recognition

机译:识别消息和使者:仿生频谱分析可增强语音和说话者识别能力

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摘要

Humans are quite adept at communicating in presence of noise. However most speech processing systems, like automatic speech and speaker recognition systems, suffer from a significant drop in performance when speech signals are corrupted with unseen background distortions. The proposed work explores the use of a biologically-motivated multi-resolution spectral analysis for speech representation. This approach focuses on the information-rich spectral attributes of speech and presents an intricate yet computationally-efficient analysis of the speech signal by careful choice of model parameters. Further, the approach takes advantage of an information-theoretic analysis of the message and speaker dominant regions in the speech signal, and defines feature representations to address two diverse tasks such as speech and speaker recognition. The proposed analysis surpasses the standard Mel-Frequency Cepstral Coefficients (MFCC), and its enhanced variants (via mean subtraction, variance normalization and time sequence filtering) and yields significant improvements over a state-of-the-art noise robust feature scheme, on both speech and speaker recognition tasks.
机译:人类非常擅长在有噪音的情况下进行交流。然而,当语音信号由于看不见的背景失真而损坏时,大多数语音处理系统(如自动语音和说话者识别系统)会遭受性能的显着下降。拟议的工作探索了语音表达的生物动力多分辨率频谱分析的使用。这种方法集中于语音的信息丰富的频谱属性,并通过仔细选择模型参数来呈现语音信号的复杂而计算高效的分析。此外,该方法利用了对语音信号中消息和说话者占主导地位区域的信息理论分析的优势,并定义了特征表示来解决两种不同的任务,例如语音和说话者识别。所提出的分析超越了标准的Mel频率倒谱系数(MFCC)及其增强的变量(通过均值减法,方差归一化和时间序列滤波),并且相对于最新的噪声鲁棒特征方案,产生了显着的改进。语音和说话者识别任务。

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