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首页> 外文期刊>Selected Topics in Signal Processing, IEEE Journal of >Semi-Supervised Landmark-Guided Restoration of Atmospheric Turbulent Images
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Semi-Supervised Landmark-Guided Restoration of Atmospheric Turbulent Images

机译:半监控地标导游恢复大气湍流图像

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摘要

Image degradation due to atmospheric turbulence (AT), which is common while capturing images at long ranges, adversely affects the performance of tasks such as face alignment and face recognition. To the best of our knowledge, there does not exist any dataset consisting of turbulence-degraded face images along with their annotated landmarks and ground-truth clean images, making supervised training challenging. In this paper, we present a semisupervised method for jointly extracting facial landmarks and restoring the degraded images by exploiting the semantic information from the landmarks. The proposed approach learns to generate AT images by combining the content from a clean image and turbulence information from AT images in an unpaired manner. Next, we use heatmaps from the landmark localization network as a prior to the image restoration module. Subsequently, we impose heatmap consistency loss and heatmap confidence loss to regularize the restored images. Extensive experiments demonstrate the effectiveness of the proposed network, which achieves an NME of 2.797 on the task of landmark localization for strong turbulent images and yields improved restoration results compared to state-of-the-art methods.
机译:由于大气湍流(AT)引起的图像劣化,这在长范围内捕获图像时常见,不利地影响面部对准和面部识别的任务的性能。据我们所知,不存在于任何由湍流降级的面部图像组成的数据集以及其注释的地标和地面真理清洁图像,使受监督培训具有挑战性。在本文中,我们提出了一种用于共同提取面部地标的方法,并通过利用来自地标的语义信息来恢复降级的图像。所提出的方法通过以未配对的方式将内容与图像组合在图像和湍流信息中,学习在图像中生成图像。接下来,我们在图像恢复模块之前使用来自地图本地化网络的热量。随后,我们强加热线映射一致性损失和热爱置信度损失,以规范恢复的图像。广泛的实验证明了所提出的网络的有效性,该网络实现了2.797的NME对具有强大动荡图像的地标定位的任务,并与最先进的方法相比,得到改善的恢复结果。

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