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      InfraGAN: A GAN architecture to transfer visible images to infrared domain

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      Embargo Lift Date: 2024-02-03
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      Author(s)
      Özkanoğlu, Mehmet Akif
      Ozer, S.
      Date
      2022-02-03
      Source Title
      Pattern Recognition Letters
      Print ISSN
      0167-8655
      Electronic ISSN
      1872-7344
      Publisher
      Elsevier BV * North-Holland
      Volume
      155
      Pages
      69 - 76
      Language
      English
      Type
      Article
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      Abstract
      Utilizing both visible and infrared (IR) images in various deep learning based computer vision tasks has been a recent trend. Consequently, datasets having both visible and IR image pairs are desired in many applications. However, while large image datasets taken at the visible spectrum can be found in many domains, large IR-based datasets are not easily available in many domains. The lack of IR counterparts of the available visible image datasets limits existing deep algorithms to perform on IR images effectively. In this paper, to overcome with that challenge, we introduce a generative adversarial network (GAN) based solution and generate the IR equivalent of a given visible image by training our deep network to learn the relation between visible and IR modalities. In our proposed GAN architecture (InfraGAN), we introduce using structural similarity as an additional loss function. Furthermore, in our discriminator, we do not only consider the entire image being fake or real but also each pixel being fake or real. We evaluate our comparative results on three different datasets and report the state of the art results over five metrics when compared to Pix2Pix and ThermalGAN architectures from the literature. We report up to +16% better performance in Structural Similarity Index Measure (SSIM) over Pix2Pix and +8% better performance over ThermalGAN for VEDAI dataset. Further gains on different metrics and on different datasets are also reported in our experiments section.
      Keywords
      Domain transfer
      GANs
      Infrared image generation
      Permalink
      http://hdl.handle.net/11693/111329
      Published Version (Please cite this version)
      https://doi.org/10.1016/j.patrec.2022.01.026
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