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Fast Image Replacement Using Multi-resolution Approach

机译:使用多分辨率方法进行快速图像替换

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摘要

We developed a system including two modules: the texture analysis module and the texture synthesis module. The analysis module is capable of analyzing an input image and performing the training process by using this image data. According to the training non-periodic or periodic pattern, we use different sampling methods to have different amount of patches in order to reduce the emergences of the seams of the output synthesized image. In addition, the properties of principal component analysis (PCA) are used to reduce the dimensions of the data representation and to recombine the appearance of the features (i.e. eigenvectors). Then the vector quantization (VQ) algorithm is employed to reduce the time spent on matching comparison. For the synthesis module, the training data is used to synthesize a large output texture, or is employed to replace the removed regions of an image. The multi-resolution approach is applied to accelerate the procedure of our algorithm: the down-sampling step is the training process and the up-sampling step is in the order of reconstructing (or synthesizing) the large removed region without needing to assign initial random values or approximate values. Therefore, our system can rapidly obtain a high image quality and promising result.
机译:我们开发了一个包含两个模块的系统:纹理分析模块和纹理合成模块。分析模块能够分析输入图像并通过使用该图像数据来执行训练过程。根据训练的非周期性或周期性模式,我们使用不同的采样方法来具有不同数量的色块,以减少输出合成图像的接缝的出现。此外,主成分分析(PCA)的属性可用于减少数据表示的维数并重新组合特征(即特征向量)的外观。然后,采用向量量化(VQ)算法来减少匹配比较所花费的时间。对于合成模块,训练数据用于合成较大的输出纹理,或用于替换图像的已删除区域。应用多分辨率方法来加速我们算法的过程:下采样步骤是训练过程,上采样步骤是重建(或合成)较大的去除区域的顺序,而无需分配初始随机值或近似值。因此,我们的系统可以快速获得高质量的图像和有希望的结果。

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