We compare the generalization performance of three distinct representation schemes for facial emotions using a single classification strategy (neural network). The face images presented to the classifiers are represented as: full face projections of the dataset onto their eigenvectors (eigenfaces); a similar projection constrained to eye and mouth areas (eigenfeatures); and finally a projection of the eye and mouth areas onto the eigenvectors obtained from 32x32 random image patches from the dataset. The latter system achieves 86 % generalization on novel face images (individuals the networks were not trained on) drawn from a database in which human subjects consistently identify a single emotion for the face
Systems of facial emotion recognition have witnessed a high significance in the research field. The ...
The performance of a neural network that categorizes facial expressions is compared with human subje...
In this paper an analysis is conducted regarding whether a higher classification accuracy of facial ...
Abstract: We compare the performance and generalization capabilities of different low-dimensional re...
People's emotions are rarely put into words, far more often they are expressed through other cues. T...
We discuss the development of a neural network for fa-cial expression recognition. It aims at recogn...
Humans are able to detect and interpret faces and facial expressions during interactions with little...
Part 6: Classification Pattern RecognitionInternational audienceRecognizing the emotional state of a...
In the literature, the recognition of human facial emotions has been greatly improved. However, the ...
& There are two competing theories of facial expression recognition. Some researchers have sugge...
Becoming a face expert takes years of learning and development. Many research programs are devoted t...
Emotion on our face can determine our feelings, mental state and can directly impact our decisions. ...
When facial emotion recognition is performed in unconstrained settings, humans outperform state-of-t...
Emotion recognition plays an indispensable role in human-machine interaction system. The process inc...
The human perceptual system performs rapid processing within the early visual system: low spatial fr...
Systems of facial emotion recognition have witnessed a high significance in the research field. The ...
The performance of a neural network that categorizes facial expressions is compared with human subje...
In this paper an analysis is conducted regarding whether a higher classification accuracy of facial ...
Abstract: We compare the performance and generalization capabilities of different low-dimensional re...
People's emotions are rarely put into words, far more often they are expressed through other cues. T...
We discuss the development of a neural network for fa-cial expression recognition. It aims at recogn...
Humans are able to detect and interpret faces and facial expressions during interactions with little...
Part 6: Classification Pattern RecognitionInternational audienceRecognizing the emotional state of a...
In the literature, the recognition of human facial emotions has been greatly improved. However, the ...
& There are two competing theories of facial expression recognition. Some researchers have sugge...
Becoming a face expert takes years of learning and development. Many research programs are devoted t...
Emotion on our face can determine our feelings, mental state and can directly impact our decisions. ...
When facial emotion recognition is performed in unconstrained settings, humans outperform state-of-t...
Emotion recognition plays an indispensable role in human-machine interaction system. The process inc...
The human perceptual system performs rapid processing within the early visual system: low spatial fr...
Systems of facial emotion recognition have witnessed a high significance in the research field. The ...
The performance of a neural network that categorizes facial expressions is compared with human subje...
In this paper an analysis is conducted regarding whether a higher classification accuracy of facial ...