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Spatial Constrained Fine-Grained Color Name for Person Re-identification

机译:用于人重新识别的空间约束细粒度颜色名称

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Person re-identification is a key technique to match different persons observed in non-overlapping camera views. It's a challenging problem due to the huge intra-class variations caused by illumination, poses, viewpoints, occlusions and so on. To address these issues, researchers have proposed many visual descriptors. However, these visual features may be unstable in complicated environment. Comparatively, the semantic features can be a good supplement to visual feature descriptors for its robustness. As a kind of representative semantic features, color name is utilized in this paper. The color name is a semantic description of an image and shows good robustness to photometric variations. Traditional color name based methods are limited in discriminative power due to the finite color categories, only 11 or 16 kinds. In this paper, a new fine-grained color name approach based on bag-of-words model is proposed. Moreover, spatial information, with its advantage in strengthening constraints among features in variant environment, is further applied to optimize our method. Extensive experiments conducted on benchmark datasets have shown great superiorities of the proposed method.
机译:人重新识别是匹配在非重叠相机视图中观察到不同人的关键技术。由于照明,姿势,观点,闭塞等巨大的阶级内变化,这是一个具有挑战性的问题。为了解决这些问题,研究人员提出了许多可视描述符。但是,这些视觉功能可能在复杂环境中不稳定。相比之下,语义特征可以是稳健性的视觉特征描述符的良好补充。作为一种代表性语义特征,本文使用了颜色名称。颜色名称是图像的语义描述,并且对光度变化显示了良好的鲁棒性。由于有限色彩类别,仅为11或16种,传统的基于颜色名称的方法受到歧视性的限制。本文提出了一种基于袋式模型的新型细粒度的颜色名称方法。此外,在改变变体环境中的特征中的强化约束方面,空间信息进一步应用于优化我们的方法。在基准数据集上进行的广泛实验显示了所提出的方法的优越性。

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