We present M3ER, a learning-based method for emotion recognition from multiple input modalities. Our approach combines cues from multiple co-occurring modalities (such as face, text, and speech) and also is more robust than other methods to sensor noise in any of the individual modalities. M3ER models a novel, data-driven multiplicative fusion method to combine the modalities, which learn to emphasize the more reliable cues and suppress others on a per-sample basis. By introducing a check step which uses Canonical Correlational Analysis to differentiate between ineffective and effective modalities, M3ER is robust to sensor noise. M3ER also generates proxy features in place of the ineffectual modalities. We demonstrate the efficiency of our ...
Multimodal affective computing, learning to recognize and interpret human affect and subjective info...
The recognition of emotions in speech is one of the most challenging topics in data science. In this...
Emotion plays an important role in human communications. We construct a framework for multi-modal fu...
During face to face communication, it has been suggested that as much as 70 % of what people communi...
Multi-modal Multi-label Emotion Recognition (MMER) aims to identify various human emotions from hete...
Human communication includes rich emotional content, thus the development of multimodal emotion reco...
Emotion is expressed and perceived through multiple modalities. In this work, we model face, voice a...
Even without hearing or seeing individuals, humans are able to determine subtle emotions from a rang...
Emotion recognition has become one of the most researched subjects in the scientific community, espe...
Humans express their emotions in a variety of ways, which inspires research on multimodal fusion-bas...
In this paper we present a multimodal approach for the recognition of eight emotions that integrates...
Emotion Recognition (ER) aims to classify human utterances into different emotion categories. Based ...
Semantic-rich speech emotion recognition has a high degree of popularity in a range of areas. Speech...
Many factors render multimodal affect recognition approaches appealing. First, humans employ a multi...
Recognition of emotions from multimodal cues is of basic interest for the design of many adaptive in...
Multimodal affective computing, learning to recognize and interpret human affect and subjective info...
The recognition of emotions in speech is one of the most challenging topics in data science. In this...
Emotion plays an important role in human communications. We construct a framework for multi-modal fu...
During face to face communication, it has been suggested that as much as 70 % of what people communi...
Multi-modal Multi-label Emotion Recognition (MMER) aims to identify various human emotions from hete...
Human communication includes rich emotional content, thus the development of multimodal emotion reco...
Emotion is expressed and perceived through multiple modalities. In this work, we model face, voice a...
Even without hearing or seeing individuals, humans are able to determine subtle emotions from a rang...
Emotion recognition has become one of the most researched subjects in the scientific community, espe...
Humans express their emotions in a variety of ways, which inspires research on multimodal fusion-bas...
In this paper we present a multimodal approach for the recognition of eight emotions that integrates...
Emotion Recognition (ER) aims to classify human utterances into different emotion categories. Based ...
Semantic-rich speech emotion recognition has a high degree of popularity in a range of areas. Speech...
Many factors render multimodal affect recognition approaches appealing. First, humans employ a multi...
Recognition of emotions from multimodal cues is of basic interest for the design of many adaptive in...
Multimodal affective computing, learning to recognize and interpret human affect and subjective info...
The recognition of emotions in speech is one of the most challenging topics in data science. In this...
Emotion plays an important role in human communications. We construct a framework for multi-modal fu...