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Visual processing-inspired Fern-Audio features for Noise-Robust Speaker Verification

机译:视觉处理灵感的Fern-Audio功能,可用于强噪声扬声器验证

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In this paper, we consider the problem of speaker verification as a two-class object detection problem in computer vision, where the object instances are 1-D short-time spectral vectors obtained from the speech signal. More precisely, we investigate the general problem of speaker verification in the presence of additive white Gaussian noise, which we consider as analogous to visual object detection under varying illumination conditions. Inspired by their recent success in illumination-robust object detection, we apply a certain class of binary-valued pixel-pair based features called Ferns for noise-robust speaker verification. Intensive experiments on a benchmark database according to a standard evaluation protocol have shown the advantage of the proposed features in the presence of moderate to extremely high amounts of additive noise.
机译:在本文中,我们将扬声器验证作为计算机视觉中的两类对象检测问题的问题,其中对象实例是从语音信号获得的1-D短时间光谱矢量。更确切地说,我们调查在存在添加性白高斯噪声的存在下扬声器验证的一般问题,我们认为在不同的照明条件下认为与视觉物体检测类似。灵感来自他们最近在照明 - 强大的对象检测中取得的成功,我们应用了一定类别的基于二进制值的像素对,称为蕨类植物,用于振控扬声器验证。根据标准评估协议的基准数据库的强化实验表明,在适度至极高的添加剂噪声存在下提出的特征的优势。

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