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Regression based bandwidth selection for segmentation using Parzen windows

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We consider the problem of segmentation of images that can be modelled as piecewise continuous signals having unknown, nonstationary statistics. We propose a solution to this problem which first uses a regression framework to estimate the image PDF, and then mean-shift to find the modes of this PDF. The segmentation follows from mode identification wherein pixel clusters or image segments are identified with unique modes of the multimodal PDF. Each pixel is mapped to a mode using a convergent, iterative process. The effectiveness of the approach depends upon the accuracy of the (implicit) estimate of the underlying multimodal density function and thus on the bandwidth parameters used for its estimate using Parzen windows. Automatic selection of bandwidth parameters is a desired feature of the algorithm. We show that the proposed regression-based model admits a realistic framework to automatically choose bandwidth parameters which minimizes a global error criterion. We validate the theory presented with results on real images.
机译:我们考虑了可以以分段连续信号建模的图像分割的问题,该分段连续信号具有未知,非间断统计。我们提出了解决这个问题的解决方案,首先使用回归框架来估计图像PDF,然后均衡以找到该PDF的模式。遵循模式识别的分割,其中像素簇或图像段用多模式PDF的唯一模式识别。每个像素使用会聚,迭代过程映射到模式。该方法的有效性取决于(隐式)估计底层多模态密度函数的准确性,从而估计使用Parzen Windows用于其估计的带宽参数。自动选择带宽参数是算法的期望特征。我们表明,所提出的基于回归的模型承认,逼真的框架自动选择带宽参数,这最小化了全局误差标准。我们验证了在真实图像上呈现的结果。

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