鲁棒和判别局部颜色模式(RADLCP):一种新的用于人脸识别的颜色描述符

Shekhar Karanwal
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引用次数: 0

摘要

在[1]中,Karanwal等人在人脸识别(FR)中引入了一种新的颜色描述符,称为融合局部颜色模式(FLCP)。在FLCP中,RGB颜色格式用于提取特征。从R、G和B通道中,施加MRELBP-NI、6×6MB-LBP和RD-LBP进行特征提取,然后将其全部积分以形成FLCP大小。FLCP胜过各种方法的准确性。在[1]中观察到的一个主要缺点是使用基本格式RGB来提取特征。文献表明,其他混合格式的识别率比RGB更好。受文献启发,本文使用混合颜色空间格式RCrQ进行特征提取。在这种格式中,R通道取自RGB,Cr通道取自YCbCr,Q通道取自YIQ。在R通道上,施加MRELBP-NI来提取特征,在Cr通道上施加6×6MB-LBP,在Q通道上施加RD-LBP来提取特征。然后将所有通道特征连接起来,建立鲁棒判别特征,称为鲁棒判别局部颜色模式(RADLCP)。PCA和SVM有助于压缩和匹配。为了评估结果,使用了GT人脸数据集。结果证明了RADLCP与基于灰度的实现描述符相比的有效性。RADLCP也胜过FLCP的结果。RADLCP也超越了一些文献技术。为了评估所有结果,使用了MATLAB R2021a。
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Robust And Discriminant Local Color Pattern (RADLCP): A novel color descriptor for face recognition
In [1] Karanwal et al. introduced the novel color descriptor in Face Recognition (FR) called as Fused Local Color Pattern (FLCP). In FLCP, the RGB color format is utilized for extracting features. From R, G and B channels, the MRELBP-NI, 6 × 6 MB-LBP and RD-LBP are imposed for feature extraction and then all are integrated to form the FLCP size. FLCP beats the accuracy of various methods. The one major shortcoming observed in [1] is that the basic format RGB is used for extracting features. Literature suggests that other hybrid formats achieves better recognition rates than RGB. Motivated from literature, the proposed work uses the hybrid color space format RCrQ for feature extraction. In this format R channel is taken from RGB, Cr channel is taken from YCbCr and Q channel is taken from YIQ. On R channel, MRELBP-NI is imposed for extracting features, On Cr channel 6 × 6 MB-LBP is imposed and on Q channel RD-LBP is imposed for extracting features. Then all channel features are joined to build the robust and discriminant feature called as Robust And Discriminant Local Color Pattern (RADLCP). Compression and matching is assisted from PCA and SVMs. For evaluating results GT face dataset is used. Results proves the potency of RADLCP in contrast to gray scale based implemented descriptors. RADLCP also beats the results of FLCP. Several literature techniques are also outclassed by RADLCP. For evaluating all the results MATLAB R2021a is used.
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