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A probabilistic fusion strategy for audiovisual emotion recognition of sparse and noisy data

机译:稀疏和嘈杂数据的视听情感识别的概率融合策略

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摘要

Due to diverse expression styles in real-world scenarios, recognizing human emotions is difficult without collecting sufficient and various data for model training. Besides, emotion recognition of noisy data is another challenging problem to be solved. This work endeavors to propose a fusion strategy to alleviate the problems of noisy and sparse data in bimodal emotion recognition. Toward robust bimodal emotion recognition, a Semi-Coupled Hidden Markov Model (SC-HMM) based on a state-based bimodal alignment strategy is proposed to align the temporal relation of states of two component HMMs between audio and visual streams. Based on this strategy, the SC-HMM can diminish the over-fitting problem and achieve better statistical dependency between states of audio and visual HMMs in sparse data conditions and also provides the ability to better accommodate to the noisy conditions. Experiments show a promising result of the proposed approach.
机译:由于现实世界场景中的表达风格多种多样,如果不收集足够多的各种数据进行模型训练,则很难识别人的情绪。此外,噪声数据的情感识别是另一个需要解决的难题。这项工作致力于提出一种融合策略,以减轻双峰情绪识别中的噪声和稀疏数据问题。针对鲁棒的双峰情感识别,提出了一种基于状态双峰对准策略的半耦合隐马尔可夫模型(SC-HMM),以对准音频和视觉流之间两个分量HMM的状态的时间关系。基于此策略,SC-HMM可以减少过拟合问题,并在稀疏数据条件下实现音频和视觉HMM的状态之间更好的统计依赖性,还可以更好地适应嘈杂的条件。实验表明,该方法具有很好的应用前景。

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