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Object detection in images of natural scenes represented by AR models using Laplacian pyramids: application to leather defects localization

机译:AR模型使用Laplacian金字塔代表的自然场景图像的对象检测:应用于皮革缺陷定位

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A methodology for object detection and localization by Laplacian pyramid analysis of the features of AR (autoregressive) models applied to 2-D iconic images of natural surfaces is described. A symbolic image of a leather defect was built with features of simultaneous autoregressive models. Laplacian pyramids were then implemented for detecting defects of calf leather patches, on different resolution levels. Strategies for enhancing the wrinkled patches of the leather are discussed based on the parameters of the models. Thresholding the Laplacian pyramids for noise filtering is studied taking into account the histograms of each Laplacian image. Probable defective patches were marked by squares on a simulated original iconic image.
机译:描述了应用于应用于自然表面的2-D标志性图像的AR(自回归)模型的Laplacian金字塔分析的对象检测和定位方法。皮革缺陷的符号图像是通过同时自回归模型的特点构建的。然后实施Laplacian金字塔用于检测小牛皮肤贴片的缺陷,不同的分辨率水平。基于模型的参数讨论了增强皮革皱纹斑块的策略。考虑到每个拉普拉斯图像的直方图,研究了噪声滤波的拉普拉斯金字塔的阈值。可能的有缺陷贴片被模拟原始标志性图像上的正方形标记。

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