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Combining Spectral and Spatial Features for Robust Foreground-Background Separation

机译:结合光谱和空间特征以实现可靠的前景-背景分离

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Foreground-background separation in multispectral images of damaged manuscripts can benefit from both, spectral and spatial information. Therefore, we incorporate a Markov Random Field which provides a powerful tool to combine both features simultaneously. Higher order models enable the inclusion of spatial constraints based on stroke characteristics. We apply belief propagation for inference and include the higher order potentials by upgrading the message update. The proposed segmentation method requires no training and is independent of script, size, and style of characters. We will demonstrate the robust performance on a set of degraded documents and on synthetic images.
机译:受损手稿的多光谱图像中的前景背景分离可以从光谱和空间信息中受益。因此,我们合并了一个马尔可夫随机场,它提供了一个强大的工具来同时结合这两个功能。高阶模型可以基于笔画特征包含空间约束。我们将置信传播应用于推理,并通过升级消息更新来包含更高阶的电势。所提出的分割方法不需要任何培训,并且与脚本,大小和字符样式无关。我们将在一组降级的文档和合成图像上展示强大的性能。

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