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首页> 外文期刊>Artificial Intelligence Review: An International Science and Engineering Journal >Context-based global multi-class semantic image segmentation by wireless multimedia sensor networks
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Context-based global multi-class semantic image segmentation by wireless multimedia sensor networks

机译:无线多媒体传感器网络基于上下文的全局多类语义图像分割

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摘要

Using context to aid object detection is becoming more popular among computer vision researchers. Our physical world is structured, and our perception as human beings does not neglect contextual information. In this paper, we propose a framework that is able to simultaneously detect and segment objects of different classes under context. Context is incorporated into our model as long-range pairwise interactions between pixels, which impose a prior on the labeling. Long-range interactions have seen seldom use in the computer vision literature, and we show how to use them to encode contextual information in our segmentation. Our framework formulates the multi-class image segmentation task as an energy minimization problem and finds a globally optimal solution under certain conditions using a single graph cut. We experimentally evaluate performance of our model on two publicly available datasets: the MSRC-1 and the CorelB datasets. Our results show the applicability of our model to the multi-class segmentation problem.
机译:在计算机视觉研究人员中,使用上下文来辅助对象检测变得越来越普遍。我们的自然世界是结构化的,我们作为人类的感知并不会忽略上下文信息。在本文中,我们提出了一个能够在上下文中同时检测和分割不同类的对象的框架。上下文作为像素之间的远程成对交互作用并入我们的模型中,这会在标签上施加先验条件。远程交互很少在计算机视觉文献中使用,我们将展示如何在我们的细分中使用它们对上下文信息进行编码。我们的框架将多类图像分割任务公式化为能量最小化问题,并使用单个图割在某些条件下找到全局最优解。我们在两个可公开获得的数据集上通过实验评估了模型的性能:MSRC-1和CorelB数据集。我们的结果表明我们的模型对多类分割问题的适用性。

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