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Voice Emotion Recognition in Real Time Applications

机译:实时应用中的语音情感识别

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This paper reports the results of voice emotion recognition in real time using machine learning models. The models are trained with some commonly used and well-known audio emotion datasets together with a custom dataset. This custom dataset was recorded from non-actor and non-expert people who were trying to imagine themselves in scenarios leading to arise of the related emotion. The reason for considering this important dataset is to make the model proficient in recognizing emotions in people who are not perfect in reflecting their emotions in their voices. The results from several machine learning classifiers while recognizing five emotions like anger, happiness, sadness, neutrality and surprise are compared. Models were evaluated with and without considering the custom data set to show the effect of employing an imperfect dataset. Our experiments showed that without using our custom dataset. the ensemble machine learning models such as gradient boosting, begging and random forest reach validation accuracies 89.82%, 88.58% and 84.83% respectively, which are higher than other evaluated models. After considering our custom dataset, again these ensemble methods obtained better accuracies of 87.34%. 86.71% and 82.98% respectively. This shows that although considering our custom dataset lowers the overall accuracy but empowers the model for predicting the emotions in everyday scenarios.
机译:本文报告了使用机器学习模型实时识别语音情感的结果。模型使用一些常用和知名的音频情感数据集以及自定义数据集进行训练。这个自定义数据集是由非演员和非专家的人记录的,他们试图在导致相关情绪产生的场景中想象自己。考虑这一重要数据集的原因是,该模型能够熟练地识别那些无法完美地在声音中反映情绪的人的情绪。比较了几种机器学习分类器在识别愤怒、快乐、悲伤、中立和惊讶五种情绪时的结果。在考虑和不考虑自定义数据集的情况下对模型进行评估,以显示使用不完美数据集的效果。我们的实验表明,在不使用自定义数据集的情况下。梯度推进、乞讨和随机森林等集成机器学习模型的验证准确率分别达到89.82%、88.58%和84.83%,高于其他评估模型。在考虑了我们的定制数据集后,这些集成方法再次获得了87.34%的更高精度。分别为86.71%和82.98%。这表明,尽管考虑我们的自定义数据集会降低总体准确性,但它为预测日常场景中的情绪提供了强大的模型。

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