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LSI: Latent semantic inference for natural image segmentation

机译:LSI:用于自然图像分割的潜在语义推理

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摘要

We propose a novel label inference approach for segmenting natural images into perceptually meaningful regions. Each pixel is assigned a serial label indicating its category using a Markov Random Field (MRF) model. To this end, we introduce a framework for latent semantic inference of serial labels, called LSI, by integrating local pixel, global region, and scale information of an natural image into a MRF-inspired model. The key difference from traditional MRF based image segmentation methods is that we infer semantic segments in the label space instead of the pixel space. We first design a serial label formation algorithm named Color and Location Density Clustering (CLDC) to capture the local pixel information. Then we propose a label merging strategy to combine global cues of labels in the Cross-Region potential to grasp the contextual information within an image. In addition, to align with the structure of segmentation, a hierarchical label alignment mechanism is designed to formulate the Cross-Scale potential by utilizing the scale information to catch the hierarchy of image at different scales for final segmentation optimization. We evaluate the performance of the proposed approach on the Berkeley Segmentation Dataset and preferable results are achieved. (C) 2016 Elsevier Ltd. All rights reserved.
机译:我们提出了一种新颖的标签推理方法,用于将自然图像分割成可感知的有意义区域。使用马尔可夫随机场(MRF)模型为每个像素分配一个序列标签,指示其类别。为此,我们通过将自然像素的局部像素,全局区域和比例信息集成到MRF启发的模型中,引入了一种称为LSI的序列标签潜在语义推断的框架。与传统的基于MRF的图像分割方法的主要区别在于,我们在标签空间而不是像素空间中推断语义片段。我们首先设计一种称为颜色和位置密度聚类(CLDC)的串行标签形成算法,以捕获本地像素信息。然后,我们提出了一种标签合并策略,以结合跨区域潜力中的全局标签提示来掌握图像中的上下文信息。此外,为了与分割的结构保持一致,设计了层次化的标签对齐机制,以利用尺度信息来捕获不同尺度的图像层次结构,从而实现最终尺度的优化,从而形成交叉尺度势。我们在伯克利细分数据集上评估了所提出方法的性能,并获得了较好的结果。 (C)2016 Elsevier Ltd.保留所有权利。

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