Person reidentification (ReID) is a very hot research topic in machine learning and computer vision, and many person ReID approaches have been proposed; however, most of these methods assume that the same person has the same clothes within a short time interval, and thus their visual appearance must be similar. However, in an actual surveillance environment, a given person has a great probability of changing clothes after a long time span, and they also often take different personal belongings with them. When the existing person ReID methods are applied in this type of case, almost all of them fail. To date, only a few works have focused on the cloth-changing person ReID task, but since it is very difficult to extract generalized and robust features for representing people with different clothes, their performances need to be improved. Moreover, visual-semantic information is often ignored. To solve these issues, in this work, a novel multigranular visual-semantic embedding algorithm (MVSE) is proposed for cloth-changing person ReID, where visual semantic information and human attributes are embedded into the network, and the generalized features of human appearance can be well learned to effectively solve the problem of clothing changes. Specifically, to fully represent a person with clothing changes, a multigranular feature representation scheme (MGR) is employed to focus on the unchanged part of the human, and then a cloth desensitization network (CDN) is designed to improve the feature robustness of the approach for the person with different clothing, where different high-level human attributes are fully utilized. Moreover, to further solve the issue of pose changes and occlusion under different camera perspectives, a partially semantically aligned network (PSA) is proposed to obtain the visual-semantic information that is used to align the human attributes.
翻译:个人再身份( ReID) 是机器学习和计算机视觉中一个非常热门的研究课题, 并且已经提出了许多人再身份方法; 但是, 这些方法大多认为, 同一个人有相同的衣着, 在很短的时间间隔内, 他们的视觉外观必须相似。 但是, 在实际的监视环境中, 一个特定的人很有可能在很长的时间间隔后改变衣着, 并且他们往往会携带不同的个人物品。 当现有的人再身份方法在这类情况下应用时, 几乎全部都失败了。 到目前为止, 只有少数工作集中在换衣服的人 ReID 任务上, 但是由于很难为代表不同服装的人提取通用的特征, 他们的性能需要加以改进。 此外, 视觉性信息常常被忽略。 为了解决这些问题, 在这项工作中, 提议为换衣服的人使用新的多语言视觉内嵌入算法, 视觉内嵌的信息和人性特征进一步嵌入网络中, 人类外观的全局性特征可以很好地学习, 视觉面面面面面的特征可以有效解决多面面面面面的面面观的面观的面观, 。 具体地说,,, 人的面面面面面面的面图中,, 人的面图是用的人的面结构的面的面的面的面的图,,, 的面的面面的面的面的面面的面的面的面的面的面的面的面的面的面的面的面的面的图是用来到面的图, 面的面的面的图,, 面的面的面的面的面的面的面的面的面的面的面的图,,, 面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的面的