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Soft Biometrics: Globally Coherent Solutions for Hair Segmentation and Style Recognition Based on Hierarchical MRFs

机译:软生物识别:基于分层MRF的头发分割和样式识别的全球连贯解决方案

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摘要

Markov Random Fields (MRFs) are a popular tool in many computer vision problems and faithfully model a broad range of local dependencies. However, rooted in the Hammersley–Clifford theorem, they face serious difficulties in enforcing the global coherence of the solutions without using too high order cliques that reduce the computational effectiveness of the inference phase. Having this problem in mind, we describe a multi-layered (hierarchical) architecture for MRFs that is based exclusively in pairwise connections and typically produces globally coherent solutions, with 1) one layer working at the local (pixel) level, modeling the interactions between adjacent image patches; and 2) a complementary layer working at the object (hypothesis) level pushing toward globally consistent solutions. During optimization, both layers interact into an equilibrium state that not only segments the data, but also classifies it. The proposed MRF architecture is particularly suitable for problems that deal with biological data (e.g., biometrics), where the reasonability of the solutions can be objectively measured. As test case, we considered the problem of hair / facial hair segmentation and labeling, which are soft biometric labels useful for human recognition in-the-wild. We observed performance levels close to the state-of-the-art at a much lower computational cost, both in the segmentation and classification (labeling) tasks.
机译:马尔可夫随机场(MRF)是许多计算机视觉问题中的流行工具,可以忠实地建模各种局部依赖项。但是,基于Hammersley-Clifford定理,在不使用太高阶的集团来降低解决方案计算效率的前提下,解决方案的全局连贯性面临严重困难。考虑到这一问题,我们描述了一种MRF的多层(分层)体系结构,该体系结构完全基于成对连接,并且通常会产生全局一致的解决方案,其中1)一层在本地(像素)级别工作,对之间的交互进行建模相邻的图像补丁; 2)在对象(假设)级别上起作用的互补层,朝着全局一致的解决方案推进。在优化过程中,两层都相互作用到一个平衡状态,该状态不仅分割数据,而且对数据进行分类。所提出的MRF体系结构特别适用于处理生物学数据(例如生物特征)的问题,在这些问题中可以客观地衡量解决方案的合理性。作为测试案例,我们考虑了头发/面部毛发分割和标记的问题,这是一种软生物识别标记,可用于在野外识别人类。在分割和分类(标记)任务中,我们以较低的计算成本观察到了接近最新技术的性能水平。

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