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Statistical Modeling, Detection and Segmentation of Stains in Digitized Fabric Images

机译:统计数字化织物图像中污渍的统计建模,检测和分割

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摘要

This paper will describe a novel and automated system based on a computer vision approach, for objective evaluation of stain release on cotton fabrics. Digitized color images of the stained fabrics are obtained, and the pixel values in the color and intensity planes of these images are probabilistically modeled as a Gaussian Mixture Model (GMM). Stain detection is posed as a decision theoretic problem, where the null hypothesis corresponds to absence of a stain. The null hypothesis and the alternate hypothesis mathematically translate into a first order GMM and a second order GMM respectively. The parameters of the GMM are estimated using a modified Expectation-Maximization (EM) algorithm. Minimum Description Length (MDL) is then used as the test statistic to decide the verity of the null hypothesis. The stain is then segmented by a decision rule based on the probability map generated by the EM algorithm. The proposed approach was tested on a dataset of 48 fabric images soiled with stains of ketchup, corn oil, mustard, ragu sauce, revlon makeup and grape juice. The decision theoretic part of the algorithm produced a correct detection rate (true positive) of 93% and a false alarm rate of 5% on these set of images.
机译:本文将介绍一种基于计算机视觉方法的新型自动化系统,用于客观评估棉织物上的污渍释放情况。获得染色织物的数字化彩色图像,并将这些图像的颜色和强度平面中的像素值概率模型化为高斯混合模型(GMM)。污点检测被视为决策理论问题,其中无效假设对应于不存在污点。原假设和替代假设在数学上分别转换为一阶GMM和二阶GMM。 GMM的参数是使用改进的Expectation-Maximization(EM)算法估算的。然后,将最小描述长度(MDL)用作检验统计量,以确定原假设的真实性。然后根据基于EM算法生成的概率图的决策规则对污点进行分割。该方法在48个织物图像的数据集上进行了测试,该图像上沾有番茄酱,玉米油,芥末酱,拉古酱,露华浓化妆料和葡萄汁。该算法的决策理论部分在这些图像集上产生了93%的正确检测率(真阳性)和5%的误报警率。

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