A novel deep network architecture for reconstructing RGB facial images from thermal for face recognition

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Springer

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info:eu-repo/semantics/embargoedAccess

Özet

This work proposes a fully convolutional network architecture for RGB face image generation from a given input thermal face image to be applied in face recognition scenarios. The proposed method is based on the FusionNet architecture and increases robustness against overfitting using dropout after bridge connections, randomised leaky ReLUs (RReLUs), and orthogonal regularization. Furthermore, we propose to use a decoding block with resize convolution instead of transposed convolution to improve final RGB face image generation. To validate our proposed network architecture, we train a face classifier and compare its face recognition rate on the reconstructed RGB images from the proposed architecture, to those when reconstructing images with the original FusionNet, as well as when using the original RGB images. As a result, we are introducing a new architecture which leads to a more accurate network.

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Anahtar Kelimeler

Fully convolutional networks, FusionNet, Thermal imaging, Face recognition

Kaynak

MULTIMEDIA TOOLS AND APPLICATIONS

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Cilt

78

Sayı

Künye

Litvin, A., Nasrollahi, K., Escalera, S., Ozcinar, C., Moeslund, T. B., & Anbarjafari, G. (September 30, 2019). A novel deep network architecture for reconstructing RGB facial images from thermal for face recognition. Multimedia Tools and Applications : an International Journal, 78, 18, 25259-25271.

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