Title of article :
Design-Based Texture Feature Fusion Using Gabor Filters and Co-Occurrence Probabilities
Author/Authors :
D. A. Clausi and H. Deng، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
A design-based method to fuse Gabor filter and grey
level co-occurrence probability (GLCP) features for improved
texture recognition is presented. The fused feature set utilizes both
the Gabor filter’s capability of accurately capturing lower and
mid-frequency texture information and the GLCP’s capability
in texture information relevant to higher frequency components.
Evaluation methods include comparing feature space separability
and comparing image segmentation classification rates. The fused
feature sets are demonstrated to produce higher feature space
separations, as well as higher segmentation accuracies relative
to the individual feature sets. Fused feature sets also outperform
individual feature sets for noisy images, across different noise
magnitudes. The curse of dimensionality is demonstrated not
to affect segmentation using the proposed the 48-dimensional
fused feature set. Gabor magnitude responses produce higher
segmentation accuracies than linearly normalized Gabor magnitude
responses. Feature reduction using principal component
analysis is acceptable for maintaining the segmentation performance,
but feature reduction using the feature contrast method
dramatically reduced the segmentation accuracy. Overall, the designed
fused feature set is advocated as a means for improving
texture segmentation performance.
Keywords :
greylevel co-occurrence probability (GLCP) , K-means , Principal componentanalysis (PCA) , Brodatz , Clustering , grey level co-occurrence matrix , feature contrast (FC) , Fisherlinear discriminant (FLD) , texture analysis. , segmentation
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING