CVMMJan 3, 2022

R-Theta Local Neighborhood Pattern for Unconstrained Facial Image Recognition and Retrieval

arXiv:2201.00504v111 citations
Originality Incremental advance
AI Analysis

This work addresses facial recognition and retrieval problems for applications in security and biometrics, but it is incremental as it builds on existing local pattern descriptors.

The paper tackles facial image recognition and retrieval by proposing the R-Theta Local Neighborhood Pattern (RTLNP) descriptor, which encodes pixel relationships in local neighborhoods with angular and radial divisions, achieving better retrieval rates compared to state-of-the-art methods on multiple challenging databases.

In this paper R-Theta Local Neighborhood Pattern (RTLNP) is proposed for facial image retrieval. RTLNP exploits relationships amongst the pixels in local neighborhood of the reference pixel at different angular and radial widths. The proposed encoding scheme divides the local neighborhood into sectors of equal angular width. These sectors are again divided into subsectors of two radial widths. Average grayscales values of these two subsectors are encoded to generate the micropatterns. Performance of the proposed descriptor has been evaluated and results are compared with the state of the art descriptors e.g. LBP, LTP, CSLBP, CSLTP, Sobel-LBP, LTCoP, LMeP, LDP, LTrP, MBLBP, BRINT and SLBP. The most challenging facial constrained and unconstrained databases, namely; AT&T, CARIA-Face-V5-Cropped, LFW, and Color FERET have been used for showing the efficiency of the proposed descriptor. Proposed descriptor is also tested on near infrared (NIR) face databases; CASIA NIR-VIS 2.0 and PolyU-NIRFD to explore its potential with respect to NIR facial images. Better retrieval rates of RTLNP as compared to the existing state of the art descriptors show the effectiveness of the descriptor

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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