Blurred image regions detection using wavelet-based histograms and SVM

V. Kanchev, Krasimir Tonchev, O. Boumbarov
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引用次数: 9

Abstract

This paper presents an algorithm for detection and localization of blurred regions in images. The algorithm is based on discrimination of the gradient distributions between blurred and non-blurred image regions. For this purpose, global wavelet transform of Y component of the image is applied, and the obtained wavelet map is divided into overlapping patches. Then a trained probabilistic SVM classifier estimates the blur level of the patches on their wavelet gradient histograms and thereby probability map is constructed. Finally, we perform a more precise determination of borders of blur region based on estimated Laplace distribution of its wavelet coefficients.
基于小波直方图和支持向量机的模糊图像区域检测
提出了一种图像模糊区域的检测与定位算法。该算法基于模糊和非模糊图像区域之间梯度分布的判别。为此,对图像的Y分量进行全局小波变换,并将得到的小波映射分割成重叠的小块。然后用训练好的概率支持向量机分类器估计小波梯度直方图上斑块的模糊程度,从而构造概率图。最后,基于估计的小波系数拉普拉斯分布,对模糊区域的边界进行了更精确的确定。
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