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Exploring Joint Equalization of Spatial-Temporal Contextual Statistics of Speech Features for Robust Speech Recognition

机译:探索鲁棒语音识别语音特征的空间上下文统计的联合均衡

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Histogram equalization (HEQ) of speech features has recently become an active focus of much research in the field of robust speech recognition due to its inherent neat formulation and remarkable performance. Our work in this paper continues this general' line of research in two significant aspects. First, a novel framework for joint equalization of spatial-temporal contextual statistics of speech features-is proposed. For this idea to work, we leverage simple differencing and averaging operations to render the contextual relationships of feature vector components, not only between different dimensions but also between consecutive speech frames, for speech feature normalization. Second, we exploit a polynomial-fitting scheme to efficiently approximate the inverse of the cumulative density function of training speech, so as to work in conjunction with the presented normalization framework. As such, it provides the advantages of lower storage and time consumption when compared with the conventional HEQ methods. All experiments were carried put on the Aurora-2 database and task. The performance of the methods deduced from our proposed framework was thoroughly tested and verified by comparisons with other popular robustness methods, which suggests the utility of our methods.
机译:由于其固有的整洁配方和显着性能,最近,语音特征的直方图均衡(HEQ)最近成为强大的语音识别领域的积极焦点。我们本文的工作继续在两个重要方面继续这一普通的研究。首先,提出了一种新颖的,用于语音特征的空间 - 时间上下文统计的联合均衡框架。对于这个想法,我们利用简单的差异和平均操作来渲染特征向量组件的上下文关系,不仅在不同的尺寸之间,而且在连续的语音帧之间进行语音特征归一化。其次,我们利用多项式拟合方案,以有效地近似训练讲话的累积密度函数的倒数,从而与所呈现的归一化框架一起工作。因此,与传统HEQ方法相比,它提供了较低的存储和时间消耗的优点。所有实验都携带在Aurora-2数据库和任务上。通过与其他流行的稳健性方法的比较进行了彻底测试和验证了我们所提出的框架所推断的方法的性能,这表明我们的方法的效用。

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