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Image based Emotional State Prediction from Multiparty Audio Conversation

机译:基于图像的Multiparty音频对话的情绪状态预测

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Recognizing human emotion is a complex task and is being researched upon since couple of decades. The problem has still gained popularity because of its need in various domains, when it comes to human computer interaction or human robot interaction. As per researchers, human predict other persons state of mind by observing various parameters, 70% of them being non-verbal. Human have emotions embedded in their speech, pose, gesture, context, facial expressions, and even the past history of conversation or situation. These all sub problems can be beautifully solved using learning based techniques. Predicting emotion in multi party audio based conversation aids complexity to the problem, which needs to predict intent of speech, culture, accent of talking, gender and many other diversities. There are various attempts made by researchers to classify human audio into required classes, using Support Vector Machine model, Long Short Term Memeory (LSTM) and bi-LSTM on audio input. We propose an image based emotional classification approach for an audio conversation. Spectrogram of an audio signal plotted as an image is used as a input to Convolutional Neural Network model obtaining the pattern for classification. The proposed approach is able to provide an accuracy of around 86% on test dataset, which is considerable improvement over state of the art models.
机译:认识到人类的情感是复杂的任务,因为几十年中被研究时。问题仍然得到普及,因为它在各个领域的需要,当它涉及到人机交互或人类的机器人互动。按照研究人员的人通过观察各种参数,他们被非语言的70%预测心灵的其他人的状态。人类有嵌入在他们的讲话情绪,姿势,手势,背景,表情,甚至谈话或情况的过去的历史。这些所有的子问题都可以用基于学习的技术来解决精美。在多党基于音频通话预测情感有助于复杂的问题,需要预测意图讲话,文化,说话,性别和其他许多多样性的口音。有研究人员对人类音频分为必修课各种尝试,采用支持向量机模型,长短期Memeory(LSTM)和音频输入双向LSTM。我们提出了一个音频对话基于图像的情感分类方法。绘制为图像的音频信号的频谱图被用作输入到卷积神经网络模型获得分类的图案。所提出的方法能够提供测试数据集,这是在现有技术模式的状态相当大的改善的大约86%的准确度。

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