基于感知信息的近红外图像低强度RGB纹理增强

Jaelin Lee, Younghyeon Park, B. Jeon
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引用次数: 3

摘要

摘要近红外图像中的纹理信息可以有效地提高可见光范围图像的可见性,因此研究了在低对比度区域使用近红外图像进行纹理增强。由于图像对比度增强的最终目标是人类,许多方法已经发展到考虑到人类视觉系统(HVS)对亮度的响应。在低亮度区域,统计反映人眼灵敏度特性的just - visible - difference (JND)较高,噪声相对难以被发现。然而,在对比度增强后,由于JND值降低,噪声被很好地识别。本文通过计算JND与背景亮度的关系,很好地处理了图像的特性。提出了一种以RGB图像获得的JND值为权值,将近红外图像的纹理分量添加到RGB图像的图像对比度增强方法。
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Low Intensity RGB Texture Enhancement Based on Near Infrared Image Using Perceptual Information
The texture information in the near-infrared (NIR) image is known to be effective in improving the visibility of visible-range image, thus, texture enhancement using NIR images has been investigated for the low contrast area. Since image contrast enhancement ultimately targets for human, many methods have been developed considering the Human Visual System (HVS)’s responses to luminance. In a low brightness region, the Just-Noticeable-Difference (JND), which statistically reflects sensitivity characteristics of human eye, is high, thus noise is relatively hard to notice. However, after the contrast enhancement, the noise is well recognized because the JND value decreases. In this paper, JND with respect to the background brightness is computed to properly address the characteristic of the image. We propose an image contrast enhancement method that adds texture components of NIR images to RGB image with using JND value obtained from RGB images as weights.
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