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Gender and Affect Recognition Based on GMM and GMM-UBM modeling with relevance MAP estimation

机译:基于GMM和GMM-UBM建模的性别和影响识别与相关性图估计

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The paper presents our efforts in the Gender Sub-Challenge and the Affect Sub-Challenge of the INTERSPEECH 2010 Paralin-guistic Challenge. The system for the Gender Sub-Challenge is based on modeling the Mel-Frequency Cepstrum Coefficients using Gaussian mixture models, building a separate model for each of the gender categories. For the Affect Sub-Challenge we propose a modeling schema where a universal background model is first trained an all the training data and then, employing the maximum a posteriori estimation criteria, a new feature vector of means is produced for each particular sample. The feature set used is comprised of low level descriptors from the baseline system, which in our case are split into four subsets, and modeled by its own model. Predictions from all subsystems are fused using the sum rule fusion. Aside from the baseline regression procedure, we also evaluated the Support Vector Regression and compared the performance. Both systems achieve higher recognition results on the development set compared to baseline, but in the Affect Sub-Challenge our system's cross correlation is lower than that of the baseline system, although the mean linear error is slightly superior. In the Gender Sub-Challenge the unweighted average recall on the test set is 82.84%, and for the Affect Sub-Challenge the cross-correlation on the test set is 0.39 with mean linear error of 0.143.
机译:本文提出了我们在性别亚挑战的努力和影响人际派对的亚挑战的亚挑战。性别亚攻击的系统是基于使用高斯混合模型建模熔融频率谱系数,为每个性别类别构建单独的模型。对于影响子挑战,我们提出了一种建模模式,其中最初是由所有训练数据训练的通用背景模型,然后采用最大后验估计标准,为每个特定样本产生一种新的特征向量。所使用的功能集由基线系统的低级描述符组成,在我们的情况下被分成四个子集,并由自己的模型建模。所有子系统的预测都使用总和规则融合融合。除了基准回归过程之外,我们还评估了支持向量回归并比较了性能。与基线相比,这两个系统都在开发集上实现了更高的识别结果,但在影响子挑战的影响下,我们的系统的互相关低于基线系统的互联网系统,尽管平均线性误差略有优越。在性别亚挑战中,试验组上的未加权平均召回是82.84%,并且对于影响亚挑战,测试组上的互相关是0.39,平均线性误差为0.143。

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