研究目的
To develop an effective palmprint recognition approach that is robust to changes in illumination, shadowing, and rotation angles by combining HOG with SGF for feature extraction, using AE for dimensionality reduction, and RELM for classification.
研究成果
The proposed HOG-SGF method combined with AE and RELM achieves high recognition rates and low EERs on multispectral and contactless palmprint databases, demonstrating robustness to illumination and rotation variations. Future work includes handling spoofing problems with multispectral fusion and deep learning.
研究不足
The approach may be sensitive to very high-resolution image requirements and could be computationally expensive for retraining when adding or deleting users. Deep learning methods are not explored due to small sample sizes per class.
1:Experimental Design and Method Selection:
The approach involves segmenting the ROI using David Zhang's method, extracting features with HOG-SGF, reducing dimensionality with AE, and classifying with RELM.
2:Sample Selection and Data Sources:
Three databases are used: MS-PolyU (multispectral, 24,000 images), CASIA (contactless, 5,502 images), and Tongji (contactless, 12,000 images).
3:List of Experimental Equipment and Materials:
Palmprint images from databases, MATLAB R2015a software, a laptop with Intel Core i7-4510U CPU, 8 GB RAM, and Windows
4:Experimental Procedures and Operational Workflow:
Images are scaled to 64x64 pixels, converted to grayscale, divided into cells and blocks, gradients are computed, histograms are constructed, SGF kernels are created, mean and standard deviation features are extracted, features are normalized, AE reduces dimensionality, and RELM performs classification.
5:Data Analysis Methods:
Recognition rates and equal error rates (EERs) are computed, and comparisons are made with state-of-the-art methods.
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