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Deep Exposure Fusion with Deghosting via Homography Estimation and Attention Learning

机译:通过单应估计和注意力学习进行深度曝光与去鬼影融合

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Modern cameras have limited dynamic ranges and often produce images with saturated or dark regions using a single exposure. Although the problem could be addressed by taking multiple images with different exposures, exposure fusion methods need to deal with ghosting artifacts and detail loss caused by camera motion or moving objects. This paper proposes a deep network for exposure fusion. For reducing the potential ghosting problem, our network only takes two images, an underexposed image and an overexposed one. Our network integrates together thew homography estimation for compensating camera motion, the attention mechanism for correcting remaining misalignment and moving pixels, and adversarial learning for alleviating other remaining artifacts. Experiments on real-world photos taken using handheld mobile phones show that the proposed method can generate high-quality images with faithful detail and vivid color rendition in both dark and bright areas.
机译:现代相机的动态范围有限,通常一次曝光即可产生具有饱和或暗区的图像。尽管可以通过拍摄具有不同曝光量的多张图像来解决该问题,但是曝光融合方法需要处理因相机运动或移动物体而导致的重影伪影和细节损失。本文提出了一种用于曝光融合的深度网络。为了减少潜在的重影问题,我们的网络仅拍摄了两个图像,一个曝光不足的图像和一个曝光过度的图像。我们的网络将单应性估计和补偿机制集成在一起,以补偿摄像机的运动,校正机制可以纠正剩余的未对准和移动像素,而对抗性学习则可以减轻其他剩余的伪像。使用手持式手机拍摄的真实照片的实验表明,该方法可以在黑暗和明亮的区域中生成具有真实细节和生动色彩还原的高质量图像。

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