In this paper, we propose the use of denoising for microphone classification, to enable its usage for several key application domains that involve noisy conditions. We describe the proposed analysis pipeline and the baseline algorithm for microphone classification, and discuss various denoising approaches which can be applied to it within the time or spectral domain; finally, we determine the best-performing denoising procedure, and evaluate the performance of the overall, integrated approach with several SNR levels of additive input noise. As a result, the proposed method achieves an average accuracy increase of about 25% on denoised content over the reference baseline.
翻译:在本文中,我们建议对麦克风分类采用脱硝法,以便能够将其用于涉及噪音条件的若干关键应用领域。我们描述了拟议的分析管道和麦克风分类基线算法,并讨论了在时间或光谱域内可以适用于麦克风分类的各种脱硝法;最后,我们确定最佳的脱硝法程序,并评估全面综合方法的性能,以及国家情报局若干级的添加性输入噪音。因此,拟议方法在参考基线上,在脱硝化内容方面平均提高了25%左右。