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Support Vector Random Fields for Spatial Classification

机译:支持向量随机字段用于空间分类

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In this paper we propose Support Vector Random Fields (SVRFs), an extension of Support Vector Machines (SVMs) that explicitly models spatial correlations in multi-dimensional data. SVRFs are derived as Conditional Random Fields that take advantage of the generalization properties of SVMs. We also propose improvements to computing posterior probability distributions from SVMs, and present a local-consistency potential measure that encourages spatial continuity. SVRFs can be efficiently trained, converge quickly during inference, and can be trivially augmented with kernel functions. SVRFs are more robust to class imbalance than Discriminative Random Fields (DRFs), and are more accurate near edges. Our results on synthetic data and a real-world tumor detection task show the superiority of SVRFs over both SVMs and DRFs.
机译:在本文中,我们提出了支持向量随机场(SVRF),它是支持向量机(SVM)的扩展,可以显式地模拟多维数据中的空间相关性。 SVRF是作为条件随机场而派生的,它利用了SVM的泛化特性。我们还提出了从SVM计算后验概率分布的改进,并提出了鼓励空间连续性的局部一致性潜在度量。 SVRF可以得到有效的训练,在推理过程中可以快速收敛,并且可以通过内核功能进行微不足道的扩充。 SVRF在分类不平衡方面比区分随机场(DRF)更强大,并且在边缘附近更准确。我们在合成数据和实际肿瘤检测任务上的结果表明,SVRF优于SVM和DRF。

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