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Parameter Optimization Issues for Cross-corpora Emotion Classification

机译:Cross-Corpora情感分类的参数优化问题

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As speech based emotion recognition has matured to a degree where it becomes applicable within real-life conditions, it is time for a realistic view on obtainable performances. Most state-of-the-art emotion recognition methods are based on turn- and frame-level analysis independent of phonetic transcription. True speaker disjoint partitioning of training and test sets is still less common than simple cross-validation. Even speaker disjoint experiments can give only little insight into the generalization ability of modern emotion recognition engines since training and test sets used for system development usually tend to be similar as far as acoustic channel, noise overlay, and language are concerned. A considerably more realistic impression can be gathered by cross-corpora evaluation. Tuning of the emotion classification engine (feature set optimization and normalization, selection of a classification technique and corresponding parameter configuration) is an important issue of realistic evaluations. In the ideal case, an optimal classifier configuration estimated on training data should provide an outstanding recognition performance on unseen data. We therefore compare cross-corpora classification performances of optimized and non-optimized general and phonetic-pattern dependent classifiers.
机译:由于基于言语的情感识别已经成熟,这是在现实生活条件下适用的程度,现在是对可获得的表演的现实观点的时间。大多数最先进的情绪识别方法基于与语音转录无关的转弯和帧级分析。真正的扬声器脱节培训和测试集的分区仍然不如简单的交叉验证常见。即使是扬声器不相交的实验也可以对现代情感识别发动机的泛化能力进行很少的洞察力,因为用于系统开发的训练和测试集通常与声频道,噪声覆盖层和语言相似。跨学士评估可以收集相当多的现实印象。调整情感分类引擎(特征设置优化和归一化,分类技术的选择和相应的参数配置)是一个重要的现实评估问题。在理想的情况下,估计在训练数据上的最佳分类器配置应在未完成数据上提供出色的识别性能。因此,我们比较了优化和非优化的一般和语音模式相关分类器的跨学历分类性能。

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