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A study of effectiveness of speech enhancement for cognitive load classification in noisy conditions

机译:语音条件下语音增强对认知负荷分类的有效性研究

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In the last decade, speech-features have been effectively utilized for estimating cognitive load level in ideal conditions where recorded speech is clean. However, in more realistic conditions, the recorded speech data is corrupted by noise. Hence, the employment of speech enhancement is essential to reduce the noise. In this paper, the effectiveness of three speech enhancement algorithms proposed in our previous studies are compared based on performance and processing time and the most suitable method is utilized to denoise the input noisy speech before feeding it to a cognitive load classification system in order to improve its performance. The results of this study indicate that the use of speech enhancement can reduce 3.0% of average relative error rate for the system under the effect of various noisy conditions.
机译:在过去的十年中,语音功能已被有效地用于估计理想状态下的认知负荷水平,在这种情况下,录制的语音是干净的。然而,在更现实的条件下,所记录的语音数据被噪声破坏。因此,采用语音增强对降低噪声至关重要。在本文中,我们根据性能和处理时间比较了我们先前研究中提出的三种语音增强算法的有效性,并采用了最合适的方法对输入的嘈杂语音进行降噪,然后再将其输入到认知负荷分类系统中以进行改进其性能。这项研究的结果表明,在各种嘈杂条件下,语音增强功能的使用可以将系统的平均相对错误率降低3.0%。

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