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首页> 外文期刊>IEEE transactions on multimedia >Sparse Kernel Reduced-Rank Regression for Bimodal Emotion Recognition From Facial Expression and Speech
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Sparse Kernel Reduced-Rank Regression for Bimodal Emotion Recognition From Facial Expression and Speech

机译:基于面部表情和语音的双峰情感识别的稀疏核降阶回归

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摘要

A novel bimodal emotion recognition approach from facial expression and speech based on the sparse kernel reduced-rank regression (SKRRR) fusion method is proposed in this paper. In this method, we use the openSMILE feature extractor and the scale invariant feature transform feature descriptor to respectively extract effective features from speech modality and facial expression modality, and then propose the SKRRR fusion approach to fuse the emotion features of two modalities. The proposed SKRRR method is a nonlinear extension of the traditional reduced-rank regression (RRR), where both predictor and response feature vectors in RRR are kernelized by being mapped onto two high-dimensional feature space via two nonlinear mappings, respectively. To solve the SKRRR problem, we propose a sparse representation (SR)-based approach to find the optimal solution of the coefficient matrices of SKRRR, where the introduction of the SR technique aims to fully consider the different contributions of training data samples to the derivation of optimal solution of SKRRR. Finally, we utilize the eNTERFACE '05 and AFEW 4.0 bimodal emotion database to conduct the experiments of monomodal emotion recognition and bimodal emotion recognition, and the results indicate that our presented approach acquires the highest or comparable bimodal emotion recognition rate among some state-of-the-art approaches.
机译:提出了一种基于稀疏核降秩回归(SKRRR)融合方法的基于表情和语音的双峰情感识别方法。在这种方法中,我们使用openSMILE特征提取器和尺度不变特征变换特征描述符分别从语音模态和面部表情模态中提取有效特征,然后提出SKRRR融合方法来融合两种模态的情感特征。所提出的SKRRR方法是传统的降秩回归(RRR)的非线性扩展,其中通过分别通过两个非线性映射映射到两个高维特征空间,将RRR中的预测因子和响应特征向量都进行核化。为了解决SKRRR问题,我们提出了一种基于稀疏表示(SR)的方法来找到SKRRR系数矩阵的最佳解决方案,其中SR技术的引入旨在充分考虑训练数据样本对推导的不同贡献SKRRR的最佳解决方案。最后,我们利用eNTERFACE '05和AFEW 4.0双峰情感数据库进行了单峰情感识别和双峰情感识别的实验,结果表明我们提出的方法在某些状态下获得了最高或可比的双峰情感识别率。最先进的方法。

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