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A Color Distance Model Based on Visual Recognition

机译:基于视觉识别的色彩距离模型

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摘要

In computer vision, Euclidean Distance is generally used to measure the color distance between two colors. And how to deal with illumination change is still an important research topic. However, our evaluation results demonstrate that Euclidean Distance does not perform well under illumination change. Since human eyes can recognize similar or irrelevant colors under illumination change, a novel color distance model based on visual recognition is proposed. First, we find that various colors are distributed complexly in color spaces. We propose to divide the HSV space into three less complex subspaces, and study their specific distance models. Then a novel hue distance is modeled based on visual recognition, and the chromatic distance model is proposed in line with our visual color distance principles. Finally, the gray distance model and the dark distance model are studied according to the natures of their subspaces, respectively. Experimental results show that the proposed model outperforms Euclidean Distance and the related methods and achieves a good distance measure against illumination change. In addition, the proposed model obtains good performance for matching patches of pedestrian images. The proposed model can be applied to image segmentation, pedestrian reidentification, visual tracking, and patch or superpixel-based tasks.
机译:在计算机视觉中,欧几里德距离通常用于测量两种颜色之间的色距离。以及如何处理照明变化仍然是一个重要的研究主题。然而,我们的评估结果表明,欧几里德距离在照明变化下没有良好表现。由于人眼可以在照明变化下识别类似或无关的颜色,因此提出了一种基于视觉识别的新型色彩距离模型。首先,我们发现各种颜色在彩色空间中分布复杂。我们建议将HSV空间划分为三个不太复杂的子空间,并研究其特定距离模型。然后基于视觉识别建模新颖的色调距离,并且符合我们的视觉色距离原理提出了色差模型。最后,根据子空间的自然来研究灰度距离模型和暗距离模型。实验结果表明,拟议的模型优于欧几里德距离和相关方法,实现了对照明变化的良好距离测量。此外,所提出的模型可获得匹配行人图像斑块的良好性能。该建议的模型可以应用于图像分割,行人重新入住,视觉跟踪和修补程序或基于SuperPixel的任务。

著录项

  • 作者

    Jingqin Lv; Jiangxiong Fang;

  • 作者单位
  • 年度 2018
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  • 原文格式 PDF
  • 正文语种 eng
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