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This book discusses human emotion recognition from face images
using different modalities, highlighting key topics in facial
expression recognition, such as the grid formation, distance
signature, shape signature, texture signature, feature selection,
classifier design, and the combination of signatures to improve
emotion recognition. The book explains how six basic human emotions
can be recognized in various face images of the same person, as
well as those available from benchmark face image databases like
CK+, JAFFE, MMI, and MUG. The authors present the concept of
signatures for different characteristics such as distance and shape
texture, and describe the use of associated stability indices as
features, supplementing the feature set with statistical parameters
such as range, skewedness, kurtosis, and entropy. In addition, they
demonstrate that experiments with such feature choices offer
impressive results, and that performance can be further improved by
combining the signatures rather than using them individually. There
is an increasing demand for emotion recognition in diverse fields,
including psychotherapy, biomedicine, and security in government,
public and private agencies. This book offers a valuable resource
for researchers working in these areas.
This book discusses human emotion recognition from face images
using different modalities, highlighting key topics in facial
expression recognition, such as the grid formation, distance
signature, shape signature, texture signature, feature selection,
classifier design, and the combination of signatures to improve
emotion recognition. The book explains how six basic human emotions
can be recognized in various face images of the same person, as
well as those available from benchmark face image databases like
CK+, JAFFE, MMI, and MUG. The authors present the concept of
signatures for different characteristics such as distance and shape
texture, and describe the use of associated stability indices as
features, supplementing the feature set with statistical parameters
such as range, skewedness, kurtosis, and entropy. In addition, they
demonstrate that experiments with such feature choices offer
impressive results, and that performance can be further improved by
combining the signatures rather than using them individually. There
is an increasing demand for emotion recognition in diverse fields,
including psychotherapy, biomedicine, and security in government,
public and private agencies. This book offers a valuable resource
for researchers working in these areas.
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