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A Tree-Structured Clustering Method Integrating Noise and SNR for Piecewise Linear-Transformation-Based Noise Adaptation

机译:一种树木结构聚类方法,用于分段线性变换的噪声适应的噪声和SNR

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This paper proposes the application of a tree-structured clustering method that integrates the effects of noise as well as SNR variation in the framework of piecewise-linear transformation (PLT)-based noise adaptation for robust speech recognition. According to the clustering results, a noisy speech HMM is made for each node of the tree structure. An HMM that best matches the input speech is selected based on the likelihood maximization criterion by tracing the tree downward from the top (root), and the selected HMM is further adapted by linear transformation. The proposed method is evaluated by applying it to a Japanese dialogue recognition system. Experimental results confirm that the proposed method is effective in recognizing numerically noise-added speech and actual noisy speech uttered by a wide range of speakers under various noise conditions.
机译:本文提出了一种应用树结构化聚类方法,该方法集成了噪声的影响以及用于鲁棒语音识别的分段 - 线性变换(PLT)的响应框架中的SNR变化。根据聚类结果,对树结构的每个节点进行嘈杂的语音HMM。基于从顶部(根)向下跟踪树,基于似然最大化标准选择最佳匹配输入语音的HMM,并且所选择的HMM通过线性变换进一步调整。通过将其应用于日本对话识别系统来评估所提出的方法。实验结果证实,该方法有效地认识到在各种噪声条件下通过各种扬声器发出的数字噪音和实际嘈杂的言论。

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