User Intervention Based Detection & Removal of Cracks from Digitized Paintings

S. Desai, Kavita V. Horadi, P. Navaneet, B. Niriksha, V. Siddeshvar
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引用次数: 1

Abstract

An user intervention based advanced technique for the detection and elimination of cracks in digitized paintings and images is proposed in this paper. Usually cracks degrade the quality of painting as well as authenticity of painting becomes questionable. In the proposed method the cracks are detected by thresholding the result of the morphological top-hat transform. Further, misidentified cracks are detected either by involving user intervention or by using a semi-automatic procedure based on region growing technique. Finally, crack interpolation also called crack filling is performed using order statistics filters so as to restore the cracked image. The true positive rate and false positive rate are used to evaluate the performance of the proposed technique. We collected 2000 paintings & images classified as cracked and uncracked online digital art database for experimental purpose. The result shows achievement of true positive rate of about 98.3% at the rate of 0.1 false positive per image. This is because of providing user intervention during module called identifying mis-identified cracks.
基于用户干预的检测;从数字化绘画中去除裂缝
提出了一种基于用户干预的数字化绘画图像裂纹检测与消除技术。裂纹通常会降低画作的质量,也会使画作的真实性受到质疑。该方法利用形态学顶帽变换的结果对裂纹进行阈值检测。此外,通过涉及用户干预或使用基于区域增长技术的半自动程序来检测错误识别的裂缝。最后,利用阶数统计滤波器进行裂纹插值,即裂纹填充,恢复裂纹图像。用真阳性率和假阳性率来评价该技术的性能。我们收集了2000幅被分类为已破解和未破解的在线数字艺术数据库的绘画和图像作为实验目的。结果表明,在每张图像0.1个假阳性的情况下,真阳性率达到了98.3%左右。这是因为在称为识别错误识别裂缝的模块期间提供了用户干预。
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