High-Resolution Image Inpainting through Multiple Deep Networks

Chih-Hsu Hsu, Feng Chen, Guijin Wang
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引用次数: 11

Abstract

For the operation and aerial photography of the UAV, it is important to identify the blindspots and observe the details on the ground. But limited by the camera resolution, small or fuzzy objects can not be effectively observed. Therefore, repairment of high-definition images has become one of the important problems to be solved. In recent years, the development of the deep learning method has effectively solved the loss and blurring of images, but because of the difficulties in training and the speed of calculation it can only be used with low-pixel images. Therefore, we propose a method for superimposing images first with the content and textual recovery for the defaced area. We use unsupervised learning GANs and trained VGG network to restore holes and missing areas of the image, and then enlarge it through CNN method. Our preliminary results show that high resolution image restoration speed has been greatly improved, and details become sharper than using traditional method.
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通过多个深度网络进行高分辨率图像绘制
对于无人机的操作和航拍来说,识别盲点和观察地面细节是非常重要的。但受相机分辨率的限制,不能有效地观察到细小或模糊的物体。因此,高清图像的修复就成为亟待解决的重要问题之一。近年来,深度学习方法的发展有效地解决了图像的丢失和模糊问题,但由于训练困难和计算速度快,只能用于低像素图像。因此,我们提出了一种首先将图像与污损区域的内容和文本恢复叠加的方法。我们使用无监督学习gan和训练好的VGG网络来恢复图像的空洞和缺失区域,然后通过CNN方法对其进行放大。我们的初步结果表明,高分辨率图像恢复速度大大提高,细节比传统方法更清晰。
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