access icon free Fast search real-time face recognition based on DCT coefficients distribution

The authors propose an adaptive face recognition algorithm based on the discrete cosine transform (DCT) coefficients approach. For the database's establishment, the face images are pre-processed with colour transform, hair cutting, and background removing to eliminate non-face information. The recognised kernel applied the weights of DCT coefficient distribution with the entire image transformation, to avoid position mismatch and reduce the light effect. The key coefficients of DCT are chosen from the training database by maximum variance. The fast search mode can reject 90% weak candidates with few coefficients to fasten the processing speed. The significant coefficients weighting methods are used to enhance face features. Only using 50 coefficients per picture, the recognition rate can achieve 95% for ORL face database testing. For real-time recognition, camera imaging is processed with algorithms using C-programming based on Windows system. The recognition rate can achieve 95% and the speed is about nine frames per second for real-time recognition in practice.

Inspec keywords: face recognition; visual databases; discrete cosine transforms; real-time systems; feature extraction

Other keywords: nonface information; recognition rate; DCT coefficients distribution; training database; face features; key coefficients; fast search mode; image transformation; camera imaging; fast search real-time face recognition; adaptive face recognition algorithm; ORL face database testing; face images; real-time recognition

Subjects: Integral transforms; Computer vision and image processing techniques; Image recognition; Spatial and pictorial databases; Integral transforms

http://iet.metastore.ingenta.com/content/journals/10.1049/iet-ipr.2018.6175
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