一个有情感意识的朋友:走向人工通用智能

Ankit Vishwakarma, Sahil Sawant, Prerana Sawant, R. Shankarmani
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引用次数: 2

摘要

心理健康是导致死亡的主要原因,影响到全球超过4.5亿人。现有的情绪识别模型可以帮助理解一个人的状态,但主要是通过文本。本文提出的模型是在个性化的多模态架构中开发的,它包含了所有必要的方面,通过他/她的文本上下文、语音特征和面部表情来预测一个人的累积情绪状态。主要有3种不同的模型:来自变压器的双向编码器表示,多层感知器分类器和卷积神经网络同步工作以满足需求。与此同时,实现的进步包括通用对抗网络(GAN),以产生一个人类实体,帮助人类应对他们的情绪状态,并实际上将他们从任何严重的危险中拯救出来。在GAN和假唱模型的帮助下,模型在分析和考虑用户的心理状态后,与用户进行对话,帮助用户找到相应的解决方案。
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An Emotionally Aware Friend: Moving Towards Artificial General Intelligence
Mental health is a leading cause of deaths, affecting over 450 million people globally. There are existing emotion recognition models to help and understand the state of a person but mainly via text. The proposed model in the paper is developed in a personalized multi-modal architecture to incorporate all the necessary aspects to predict the cumulative emotional status of a person by his/her text context, speech features, and facial expressions. There are mainly 3 different models: Bidirectional Encoder Representations from Transformers, Multi-layer Perceptron Classifier and Convolutional Neural Network working together in synchronization to cater to the need. Along with it, the advancement implemented includes General Adversarial Networks (GAN), to generate a human entity and help the human to cope up with their emotional state and practically save them from any kind of grave danger. The model with the help of GAN and lip-synced model manages to converse with the user after analyzing and considering their mental state, helping them to find a solution accordingly.
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