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Cross-corpus analysis for acoustic recognition of negative interactions

机译:声学识别负面相互作用的交叉语料库分析

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Recent years have witnessed a growing interest in recognizing emotions and events based on speech. One of the applications of such systems is automatically detecting when a situations gets out of hand and human intervention is needed. Most studies have focused on increasing recognition accuracies using parts of the same dataset for training and testing. However, this says little about how such a trained system is expected to perform ???in the wild???. In this paper we present a cross-corpus study using the audio part of three multimodal datasets containing negative human-human interactions. We present intra- and cross-corpus accuracies whilst manipulating the acoustic features, normalization schemes, and oversampling of the least represented class to alleviate the negative effects of data unbalance. We observe a decrease in performance when disjunct corpora are used for training and testing. Merging two datasets for training results in a slightly lower performance than the best one obtained by using only one corpus for training. A hand crafted low dimensional feature set shows competitive behavior when compared to a brute force high dimensional features vector. Corpus normalization and artificially creating samples of the sparsest class have a positive effect.
机译:近年来,目睹了越来越兴趣的兴趣识别讲话的情绪和事件。这种系统的应用程序之一是自动检测何时何时需要摆脱手和人为干预。大多数研究专注于使用相同数据集的部分进行培训和测试的识别精度。然而,这对这一训练系统有何预期在野外表现出来的几乎没有???。在本文中,我们使用包含负面人类相互作用的三个多模式数据集的音频部分呈现交叉语料库研究。我们在操纵声学特征,归一化方案和最小代表的类别的过采样时呈现和交叉组精度,同时减轻数据不平衡的负面影响。我们观察Disjunct Corpora用于培训和测试时的性能降低。合并两个数据集以培训导致性能略低,而不是通过仅使用一个用于训练的最佳培训。与蛮力高维特征向量相比,手工制作的低尺寸特征套装显示竞争行为。肉体标准化和人工制造稀疏性阶级的样本具有积极的效果。

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