| Literature DB >> 24526902 |
Rui Min1, Abdenour Hadid2, Jean-Luc Dugelay1.
Abstract
While there has been an enormous amount of research on face recognition under pose/illumination/expression changes and image degradations, problems caused by occlusions attracted relatively less attention. Facial occlusions, due, for example, to sunglasses, hat/cap, scarf, and beard, can significantly deteriorate performances of face recognition systems in uncontrolled environments such as video surveillance. The goal of this paper is to explore face recognition in the presence of partial occlusions, with emphasis on real-world scenarios (e.g., sunglasses and scarf). In this paper, we propose an efficient approach which consists of first analysing the presence of potential occlusion on a face and then conducting face recognition on the nonoccluded facial regions based on selective local Gabor binary patterns. Experiments demonstrate that the proposed method outperforms the state-of-the-art works including KLD-LGBPHS, S-LNMF, OA-LBP, and RSC. Furthermore, performances of the proposed approach are evaluated under illumination and extreme facial expression changes provide also significant results.Entities:
Mesh:
Year: 2014 PMID: 24526902 PMCID: PMC3914590 DOI: 10.1155/2014/519158
Source DB: PubMed Journal: ScientificWorldJournal ISSN: 1537-744X
Figure 1Illustration of different types of facial occlusions: (a) ordinary facial occlusions in daily life; (b) facial occlusions related to severe security issues (ATM crimes, football hooligans, etc.).
Summary of literature works in occluded face recognition.
| Category | Abbreviation | Full name/brief description |
|---|---|---|
| Locality emphasized features/classifiers. | LFA [ | Local feature analysis. |
| AMM [ | Gaussian mixture modelling of part-based Eigenface. | |
| SOM-AMM [ | Self-organizing map modelling of part-based Eigenface. | |
| LS-ICA [ | Local salient-independent component analysis. | |
| RD-Subspace [ | Combining reconstructive and discriminative subspace. | |
| ARG [ | Attributed relational graph. | |
| LGBPHS [ | Local Gabor binary patterns histogram sequence. | |
| PSVM [ | Partial support vector machines. | |
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| SRC based methods. | SRC [ | Sparse representation based classification. |
| MRF-SRC [ | Markov random field to enforce spatial continuity in SRC. | |
| Gabor-SRC [ | Compressible Gabor feature used in SRC. | |
| SIFT-SRC [ | SIFT feature used in SRC. | |
| RSC [ | Robust sparse coding. | |
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| Explicit occlusion analysis facilitated local feature/local component based methods. | Part-PCA [ | Occlusion analysis + part-based Eigenface. |
| S-LNMF [ | Selective local nonnegative matrix factorization. | |
| KLD-LGBPHS [ | Local Gabor binary patterns based on Kullback-Leibler divergence. | |
| OA-LBP [ | Occlusion analysis + LBP (our preliminary work). | |
Figure 2System flowchart.
Figure 3Our occlusion detection scheme.
Figure 4Illustration of our occlusion segmentation: (a) examples of faces occluded by scarf and sunglasses; (b) initial guess of the observation set according to the results from our occlusion detector; ((c)(d)) the visualization of u(i, j) in horizontal and vertical directions, respectively; (e) the generated occlusion masks (ω = 150).
Figure 5Example of images from the AR face database.
Figure 6The face images are divided into 64 blocks for selective LGBPHS representation.
Results of occlusion detection.
| No-occlusion | Scarf | Sunglass | Detection rate | |
|---|---|---|---|---|
| Non occlusion |
| 2 | 0 | 99.17% |
| Scarf | 0 |
| 0 | 100% |
| Sunglass | 0 | 0 |
| 100% |
Figure 7Results of PCA, OA-PCA, LBP, OA-LBP, LGBPHS, KLD-LGBPHS, OA-LGBPHS, and RSC on three different testing sets (faces are clean and faces are occluded by scarf and sunglasses).
Robustness to different facial variations.
| Sunglasses | Scarf | Scream | Right light | |
|---|---|---|---|---|
| S-LNMF | 49% | 55% | 27% | 51% |
| OA-LBP | 54.17% | 81.25% | 52.50% | 86.25% |
| OA-LGBPHS |
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