In
this paper, a novel local pattern descriptor generated by the proposed local
vector pattern (LVP) in high-order derivative space is presented for use in
face recognition. Based on the vector of each pixel constructed by computing
the values between the referenced pixel and the adjacent pixels with diverse distances
from different directions, the vector representation of the referenced pixel is
generated to provide the 1D structure o micropatterns. With the devise of pair wise
direction of vector for each pixel, the LVP reduces the feature length via
comparativespace transform to encode various spatial surrounding relation-ships
between the referenced pixel and its neighborhood pixels.Besides, the
concatenation of LVPs is compacted to produce more distinctive features. To
effectively extract more detailed discriminative information in a given
subregion, the vector of LVP is refined by varying local derivative directions
from then th-order LVP in ( n − 1)th-order derivative space, which is a much
more resilient structure of micropatterns than standard local pattern
descriptors. The proposed LVP is compared with the existing local pattern
descriptors including local binary pattern (LBP), local derivative pattern
(LDP), and local tetra pattern (LTrP) to evaluate the performances from input
grayscale face images. In addition, extensive experiments conducting on
benchmark face image databases, FERET, CAS-PEAL, CMU-PIE, Extended Yale B, and
LFW, demonstrate that the proposed LVP in high-order derivative space indeed
performs much better than LBP, LDP, and LTrP in face recognition.
No comments:
Post a Comment