Multimodal spatio-temporal framework for real-world affect recognition

Karishma Raut , Sujata Kulkarni , Ashwini Sawant
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Abstract

Deep learning models show great potential in applications involving video-based affect recognition, including human-computer interaction, robotic interfaces, stress and depression assessment, and Alzheimer's disease detection. The low complex Multimodal Diverse Spatio-Temporal Network (MDSTN) has been analysed to effectively capture spatio-temporal information from audio-visual modalities for affect recognition using the Acted Facial Expressions in the Wild (AFEW) dataset. The scarcity of data is handled by data augmented parallel feature extraction for visual network. Visual features extracted by carefully reviewing and customizing Convolutional 3D architecture over different ranges are combined to train a neural network for classification. Multi-resolution Cochleagram (MRCG) features from speech, along with spectral and prosodic audio features, are processed by a supervised classifier. The late fusion technique is explored to integrate audio and video modalities, considering their processing over different temporal spans. The MDSTN approach significantly boosts the accuracy of basic emotion recognition to 71.54 % on the AFEW dataset. It demonstrates exceptional proficiency in identifying emotions such as disgust and surprise, thus exceeding current benchmarks in real-world affect recognition.

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真实世界情感识别的多模态时空框架
深度学习模型在基于视频的情感识别应用中显示出巨大潜力,包括人机交互、机器人界面、压力和抑郁评估以及阿尔茨海默病检测。我们分析了低复杂度多模态时空网络(MDSTN),它能有效捕捉音视频模态中的时空信息,利用野外面部表情行为(AFEW)数据集进行情感识别。数据的稀缺性通过视觉网络的数据增强并行特征提取来解决。通过仔细审查和定制不同范围的卷积三维架构提取的视觉特征被组合在一起,以训练神经网络进行分类。来自语音的多分辨率共振图(MRCG)特征以及频谱和前奏音频特征由监督分类器处理。考虑到音频和视频模态在不同时间跨度上的处理过程,我们探索了后期融合技术,以整合音频和视频模态。在 AFEW 数据集上,MDSTN 方法大大提高了基本情感识别的准确率,达到 71.54%。它在识别厌恶和惊讶等情绪方面表现出了非凡的能力,从而超越了当前真实世界情感识别的基准。
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