Abstract
A facial extracted image does not have the equalized distribution of features over the complete image. Instead, most striking features are located within the core of the facial part. As the distance increases from the core part, the strength of these features faded and its impact on the recognition model reduces. In this paper, a coil spring structured model is presented to generate the selective features based on structured weights. These weights are assigned under the pressure, position, direction and coverage parameters of magnetic coils. The magnetic coil effect is applied to extract the facial features. These features are collected and mapped with dataset images with region consideration. This mapping is done for the individual region with physical features and coil-spring based evaluation. As the method is center settled, so that the effective recognition rate is achieved missing facial information or the wrong captured images. The experimentation is applied to the complete facial image sets as well as improper, occluded and irregular captured facial images. The comparative analysis is provided on Aberdeen, Stirling, Iranian, ORL, FERET and LFW databases. The proportionate observations are taken against six different algorithms, including LDA, PCA, ICA, LDA–PCA, SVM and PNN classifiers. Multiple sample sets are considered over each dataset under distinctive variation aspects. These variations include expression, pose, illumination, occlusion, etc. The analytical evaluation is also taken for CNN and landmark based methods. The extensive experimentation shows that model has improved the accuracy and robustness up to an extent. The recognition rate for each variation aspect is improved.
















Similar content being viewed by others
References
Jiani, H., Jiwen, L., & Weihong, J. G. D. (2014). Transform-invariant PCA: A unified approach to fully automatic facealignment, representation, and recognition. IEEE Transactions on Pattern Analysis and Machine Intelligence,36(6), 1275–1284.
Shonal, C. R. C. (2017). Face detection and recognition in an unconstrained environment for mobile visual assistive system. Applied Soft Computing,53, 168–180.
Hanmandlu, S. S. M. (2017). Face recognition under pose and illumination variations using the combination of information set and PLPP features. Applied Soft Computing,53, 396–406.
Dai, D.-Q., Ren, C.-X., Huang, K.-K., & Yu, Y.-F. (2017). Discriminative multi-layer illumination-robust feature extraction for face recognition. Pattern Recognition,67, 201–212.
Liu, Q., & Mao Ye Chenfei, X. (2017). Age invariant face recognition and retrieval by coupled auto-encoder networks. Neurocomputing,222, 62–71.
Yang, J., Luo, L., Zhang, H., Qian, J., Tai, Y., Zhang, J., et al. (2016). Adaptive noise dictionary construction via IRRPCA for face recognition. Pattern Recognition,59, 26–41.
Wang, L., Zhu, Q., Liu, Z., & Zhang, Y. C. Z. (2015). Noise modeling and representation based classification methods for face recognition. Neurocomputing,148, 420–429.
Elbouz, M., Alfalou, A., Brosseau, C., & Wang, Q. (2017). Designing a composite correlation filter based on iterative optimization of training images for distortion invariant face recognition. Optics and Lasers in Engineering,93, 100–108.
Juneja, K. (2017). A noise robust VDD composed PCA-LDA model for face recognition. In International conference on information, communication and computing technology, pp. 216–229.
Zheng, W.-S., Lu, F., Lai, J.-H., & Zhu, J.-Y. (2017). Illumination invariant single face image recognition under heterogeneous lighting condition. Pattern Recognition,66, 313–327.
Gill, N. S., & Juneja, K. (2015). A PCT/PST improved HMM-PCA model for pose robust facial recognition. In International conference on applied and theoretical computing and communication technology (iCATccT) (pp. 131–136).
Juneja, K. (2017) Multiple feature descriptors based model for individual identification in group photos. Journal of King Saud University-Computer and Information Sciences,31(2), 185–207.
Gill, N. S. & Juneja, K. (2015) Tied multi-rubber band model for camera distance, shape and head movement robust facial recognitio. In International conference on applied and theoretical computing and communication technology (iCATccT) (pp. 218–223).
Juneja, K. (2017). MPMFFT based DCA-DBT integrated probabilistic model for face expression classification. Journal of King Saud University—Computer and Information Sciences. https://doi.org/10.1016/j.jksuci.2017.10.006.
Chmielewska, A., Weychan, R., Parzych, M., & Marciniak, A. D. T. (2015). Influence of low resolution of images on reliability of face detection and recognition. Multimedia Tools and Applications,74(12), 4329–4349.
Jie, S., & Zhichao, L. Y. L. (2017). Adaptive illumination normalization approach based on denoising technique for face recognition. Journal of Shanghai Jiaotong University (Science),22(1), 45–49.
Sao, A. K., & Yegnanarayana, B. (2010). On the use of phase of the Fourier transform for face recognition under variations in illumination. Signal, Image and Video Processing,4(3), 353–358.
Fang, X., You, J., Chen, Y., & Hong Liu Yong, X. (2015). Noise-free representation based classification and face recognition experiments. Neurocomputing,147, 307–314.
Prílepok, M., Snáel, V., & Zaorálek, L. (2015) Recognition of face images with noise based on tucker decomposition. In International conference on systems, man, and cybernetics, Kowloon (pp. 2649–2653).
Li, L., Liu, W., Zhang, M.& Pathirage, S. N. (2015). Stacked face de-noising auto encoders for expression-robust face recognition. In International conference on digital image computing: techniques and applications (DICTA), Adelaide, SA, (pp. 1–8).
Wang, S., Zhang, H., & Zhao, J. (2014). Face recognition analysis for noise images based on combinational mirror-like odd and even features. In 7th international congress on image and signal processing, Dalian, (pp. 275–280).
Bala, G. J., Nagabhushan, P., Mandal, S. K., & Fernandes, S. L. (2013). A comparative study on score level fusion techniques and MACE Gabor filters for face recognition in the presence of noises and blurring effects. In International conference on cloud & ubiquitous computing & emerging technologies, Pune (pp. 193–198).
Bala, G. J., Nagabhushan, P., Mandal, S. K., & Fernandes, S. L. (2013). Robust face recognition in the presence of noises and blurring effects by fusing appearance based techniques and sparse representation. In 2nd international conference on advanced computing, networking and security, Mangalore, 2013 (pp. 84–89).
Matej, F. Luboš, O., Miloš O., & Jarmila, P., & Jozer, B. (2013) Face recognition under partial occlusion and noise. In Eurocon 2013, Zagreb (pp. 2072–2079).
Banerjee, P. K., & Datta, A. K. (2017). Band-pass correlation filter for illumination- and n oise-tolerant face recognition. Signal, Image and Video Processing,11, 9–16.
Yang, W., Li, H., Zhang, H., Shen, H. T., & Shen, F. (2016). Robust regression based face recognition with fast outlier removal. Multimedia Tools and Applications,75(20), 12535–12546.
Tharshini, G., Dinesh, H. G. C. P., Godaliyadda, G. M. R. I. & Ekanayake, M. P. B. (2015). A robust expression negation algorithm for accurate face recognition for limited training data. In 10th international conference on industrial and information systems (ICIIS), Peradeniya (pp. 384–389).
Tsai, L. W., Wang, Y. K., Fan, K. C., & Lu, C. L. (2010). Robust face recognition under illumination and facial expression variations. In International conference on machine learning and cybernetics, Qingdao (pp. 3257–3263).
Shafie, A. A., Mustafah, Y. M., & Zaman, F. K. (2016). Robust face recognition against expressions and partial occlusions. International Journal of Automation and Computing,13(4), 319–337.
Zhang, H., Sun, J., & Dong, W. W. X. (2017). A two-stage learning approach to face recognition. Journal of Visual Communication and Image Representation,43, 21–29.
Amin, M. A., Yan, H., & Poon, B. (2011). Performance evaluation and comparison of PCA based human face recognition methods for distorted images. International Journal of Machine Learning and Cybernetics,2(4), 245–259.
Marques, I., & Grana, M. (2012). Face recognition with lattice independent component analysis and extreme learning machines. Soft Computing,16(9), 1525–1537.
Grossi, G., Lanzarotti, R., & Adamo, J. L. A. (2015). Robust face recognition using sparse representation in LDA space. Machine Vision and Applications,26(6), 837–847.
Chen, S., Zilan, H., & Wang, B. L. H. (2008). Probabilistic two-dimensional principal component analysis and its mixture model for face recognition. Neural Computing and Applications,17(5), 541–547.
Juneja, K & Gill, N. S. (2015). A hybrid mathematical model for face localization over multi-person images and videos. In 4th international conference on reliability, infocom technologies and optimization (ICRITO) (pp. 1–5).
Zhang, Z., Wang, L., Zhu, Q., Chen, S.-K., & Chen, Y. (2015). Pose-invariant face recognition using facial landmarks and Weber local descriptor. Knowledge-Based Systems,84, 78–88.
Shi, J., Samal, A., & Marx, D. (2006). How effective are landmarks and their geometry for face recognition? Computer Vision and Image Understanding,102, 117–133.
Leng, B., et al. (2016). CNN structure for face verification and identification. Neurocomputing,215, 232–240.
Tao, Q.-Q., Zhan, S., Li, X.-H., & Kurihara, T. (2016). Robust face detection using local CNN and SVM based on kernel combination. Neurocomputing,211, 98–105.
Yu, J., Sun, K., Gao, F., & Zhu, S. (2017). Face biometric quality assessment via light CNN. Pattern Recognition Letters,107, 25–32.
Li, Y., Wang, G., Nie, L., Wang, Q., & Tan, W. (2018). Distance metric optimization driven convolutional neural network for age invariant face recognition. Pattern Recognition,75, 51–62.
Jalali, A., Mallipeddi, R., & Lee, M. (2017). Sensitive deep convolutional neural network for face recognition at large standoffs with small dataset. Expert Systems with Applications,87, 304–315.
Deng, W., Fang, Y., Zhenqi, X., & Jiani, H. (2018). Facial landmark localization by enhanced convolutional neural network. Neurocomputing,273, 222–229.
Gong, D., Li, Z., Lin, D., Liu, J. & Tang, X. (2013). Hidden factor analysis for age invariant face recognition. In International conference on computer vision (ICCV) (pp. 2872–2879).
Chen, B.-C., Chen, C.-S., & Hsu, W. (2015). Face recognition and retrieval using cross age reference coding with cross-age celebrity dataset. IEEE Transactions on Multimedia,17(6), 804–815.
Author information
Authors and Affiliations
Corresponding author
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Juneja, K., Rana, C. Center Settled Multiple-Coil Spring Model to Improve Facial Recognition Under Various Complexities. Wireless Pers Commun 111, 699–727 (2020). https://doi.org/10.1007/s11277-019-06881-2
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11277-019-06881-2