TVA-GAN: attention guided generative adversarial network for thermal to visible image transformations

被引:0
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作者
Nand Kumar Yadav
Satish Kumar Singh
Shiv Ram Dubey
机构
[1] Indian Institute of Information Technology Allahabad,Computer Vision and Biometrics Lab, Department of Information Technology
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关键词
Thermal-visible transformation; GAN; Recurrent-inception module; Attention block; Synthesized loss; Cycle synthesized loss;
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摘要
In the recent improvement in deep learning approaches for realistic image generation and translation, Generative Adversarial Networks (GANs) delivered favorable results. GAN generates novel samples that look indistinguishable from authentic images. This paper proposes a novel generative network for thermal-to-visible image translation. Thermal to Visible synthesis is challenging due to the non-availability of accurate semantic and textural information in thermal images. The thermal sensors acquire the thermal face images by capturing the object’s luminance with fewer details about the actual facial information. However, it is advantageous for low-light and night-time vision, where image information cannot be captured in a complex environment by an RGB camera. We design a new Attention-guided Cyclic Generative Adversarial Network for Thermal to Visible Face transformation (TVA-GAN) by integrating a new attention network. We utilize attention guidance with a recurrent block with an Inception module to simplify the learning space toward the optimum solution. The proposed TVA-GAN is trained and evaluated for thermal to visible face synthesis over three benchmark datasets, including the WHU-IIP, Tufts Face Thermal2RGB, and CVBL-CHILD datasets. The proposed TVA-GAN results show promising improvement in face synthesis compared to the state-of-the-art GAN methods. For the proposed TVA-GAN, code is available at: https://github.com/GANGREEK/TVA-GAN.
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页码:19729 / 19749
页数:20
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