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Genetic Normalized Convolution

机译:遗传归一化卷积

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摘要

Normalized convolution techniques operate on very few samples of a given digital signal and add missing information, trough spatial interpolation. From a practical viewpoint, they make use of data really available and approximate the assumed values of the missing information. The quality of the final result is generally better than that obtained by traditional filling methods as, for example, bilinear or bicubic interpolations. Usually, the position of the samples is assumed to be random and due to transmission errors of the signal. Vice versa, we want to apply normalized convolution to compress data. In this case, we need to arrange a higher density of samples in proximity of zones which contain details, with respect to less significant, uniform parts of the image. This paper describes an evolutionary approach to evaluate the position of certain samples, in order to reconstruct better images, according to a subjective definition of visual quality. An extensive analysis on real data was carried out to verify the correctness of the proposed methodology.
机译:归一化卷积技术对给定数字信号的极少数样本进行操作,并通过空间插值添加缺失的信息。从实际的角度来看,他们利用了真正可用的数据并近似了缺失信息的假定值。最终结果的质量通常比通过传统填充方法(例如,双线性或双三次插值)获得的质量更好。通常,由于信号的传输误差,假定样本的位置是随机的。反之亦然,我们要应用归一化卷积来压缩数据。在这种情况下,相对于图像的不太重要的均匀部分,我们需要在包含细节的区域附近安排较高密度的样本。本文根据视觉质量的主观定义,描述了一种进化方法来评估某些样本的位置,以便重建更好的图像。对真实数据进行了广泛的分析,以验证所提出方法的正确性。

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