计算机视觉中重新识别方法综述。

Matthew Millar
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引用次数: 0

摘要

多摄像头下的人的再识别问题是计算机视觉研究中的一个热点问题。问题在于,从不同的视角和环境条件下,在多个摄像头中对一个人的识别是一致的。许多计算机视觉研究人员一直在寻找能够提高人们在现实世界中的重新识别能力的方法。每年都有新的方法扩展和探索新的概念,提高再识别的准确性。本文将着眼于当前的发展和过去的趋势,找出已经做了什么和正在做什么来解决这个问题。本文将首先介绍该主题以及涵盖重新识别问题的基本概念。接下来,它将涵盖当今研究中使用的常见数据集。然后我们会讨论评估技术。然后,本文将开始描述使用的简单技术,然后是当前的深度学习技术。本文将介绍如何使用这些技术,它们的优缺点。它将总结一些最好的模型,并展示哪些模型最有前途,哪些模型应该避免。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Review of Current Methods for Re-Identification in Computer Vision.
The problem of reidentification of a person in multiple cameras is a hot topic in computer vision research. The issue is with the consistent identification of a person in multiple cameras from different viewpoints and environmental conditions.  Many computer vision researchers have been looking into methods that can improve the reidentification of people for many real-world purposes.  There are new methods each year that expand and explore new concepts and improve the accuracy of reidentification.  This paper will look at current developments and the past tends to find what has been done and what is being done to solve this problem.  This paper will start off by introducing the topic as well as covering the basic concepts of the reidentification problem.  Next, it will cover common datasets that are used in today's research.  Then it will look at evaluation techniques.  Then this paper will start to describe simple techniques that are used followed by the current deep learning techniques.  This paper will cover how these techniques are used, what are some of their weaknesses and their strengths.  It will conclude with an overview of some of the best models and show which models have the most promise and which models should be avoided.
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