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Optimal weighting of bimodal biometric information with specific application to audio-visual person identification

机译:双峰生物特征信息的最佳加权及其在视听人员识别中的特殊应用

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摘要

A new method is proposed to estimate the optimal weighting parameter for combining audio (speech) and visual (face) information in person identification, based on estimating probability density functions (pdfs) for classifier scores under Gaussian assumptions. Performance comparisons with real and simulated data indicate that this method has advantages in reducing bias and variance of the estimation relative to other methods tried, so achieving a robust estimator of the optimal weighting parameter. Another contribution is that we propose the bootstrap method to compare performances of different algorithms for estimating the optimal weighting parameter, so providing a strict criterion in comparing algorithms of this kind. Using simulated data, for which the pdf is controlled and known, we show that the advantages of the method hold up when the underlying Gaussian assumption is violated. The main drawback is that we have to choose an adjustable parameter, and it is not clear how this should best be done.
机译:提出了一种新的方法,根据高斯假设下分类器得分的概率密度函数(pdfs)的估计,在人识别中组合音频(语音)和视觉(面部)信息来估计最佳加权参数。与真实数据和模拟数据的性能比较表明,与其他尝试方法相比,该方法在减少估计的偏差和方差方面具有优势,因此可以实现最佳加权参数的鲁棒估计。另一个贡献是,我们提出了自举方法来比较不同算法的性能,以估计最佳加权参数,从而为比较此类算法提供了严格的标准。通过使用受控于pdf且已知的pdf的模拟数据,我们表明,当违反了基本的高斯假设时,该方法的优势得以保留。主要缺点是我们必须选择一个可调参数,并且尚不清楚如何最好地做到这一点。

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