文件名称:pcaexpressprot
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We propose an algorithm for facial expression recognition which can classify the given image into one of the seven basic facial expression categories (happiness, sadness, fear, surprise, anger, disgust and neutral). PCA is used for dimensionality reduction in input data while retaining those characteristics of the data set that contribute most to its variance, by keeping lower-order principal components and ignoring higher-order ones. Such low-order components contain the "most important" aspects of the data. The extracted feature vectors in the reduced space are used to train the supervised Neural Network classifier. This approach results extremely powerful because it does not require the detection of any reference point or node grid. The proposed method is fast and can be used for real-time applications.
相关搜索: facial
expression
recognition
Dimensionality
Reduction
ORDER
REDUCTION
Facial
expression
recognition
matlab
pcaexpressprot
zip
facial
expression
matlab
PCA
facial
expression
facial
expression
in
matlab
facial
expression
by
pca
feature
detection
in
ne
expression
recognition
Dimensionality
Reduction
ORDER
REDUCTION
Facial
expression
recognition
matlab
pcaexpressprot
zip
facial
expression
matlab
PCA
facial
expression
facial
expression
in
matlab
facial
expression
by
pca
feature
detection
in
ne
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下载文件列表
sourcecode.m
facialexpression.p
readme.m
facialexpression.p
readme.m