Rama Varior Rahul
IEEE Trans Image Process. 2016 Jul;25(7):3395-3410. doi: 10.1109/TIP.2016.2531280. Epub 2016 Feb 18.
Matching people across multiple camera views known as person reidentification is a challenging problem due to the change in visual appearance caused by varying lighting conditions. The perceived color of the subject appears to be different under different illuminations. Previous works use color as it is or address these challenges by designing color spaces focusing on a specific cue. In this paper, we propose an approach for learning color patterns from pixels sampled from images across two camera views. The intuition behind this work is that, even though varying lighting conditions across views affect the pixel values of the same color, the final representation of a particular color should be stable and invariant to these variations, i.e., they should be encoded with the same values. We model color feature generation as a learning problem by jointly learning a linear transformation and a dictionary to encode pixel values. We also analyze different photometric invariant color spaces as well as popular color constancy algorithm for person reidentification. Using color as the only cue, we compare our approach with all the photometric invariant color spaces and show superior performance over all of them. Combining with other learned low-level and high-level features, we obtain promising results in VIPeR, Person Re-ID 2011, and CAVIAR4REID data sets.
在多个摄像头视图中匹配人物(即所谓的行人重识别)是一个具有挑战性的问题,因为光照条件的变化会导致视觉外观发生改变。在不同光照下,目标对象的感知颜色看起来会有所不同。以往的工作要么直接使用颜色,要么通过设计聚焦于特定线索的颜色空间来应对这些挑战。在本文中,我们提出了一种方法,用于从跨两个摄像头视图的图像中采样的像素学习颜色模式。这项工作背后的直觉是,尽管不同视图间光照条件的变化会影响相同颜色的像素值,但特定颜色的最终表示应该是稳定的,并且对这些变化具有不变性,也就是说,它们应该用相同的值进行编码。我们通过联合学习线性变换和字典来对像素值进行编码,将颜色特征生成建模为一个学习问题。我们还分析了用于行人重识别的不同光度不变颜色空间以及流行的颜色恒常性算法。仅使用颜色作为线索,我们将我们的方法与所有光度不变颜色空间进行了比较,并显示出优于它们所有的性能。结合其他学到的低级和高级特征,我们在VIPeR、Person Re-ID 2011和CAVIAR4REID数据集中获得了有前景的结果。