论文标题
对可靠的深度学习人重新识别模型的调查:我们到了吗?
Survey on Reliable Deep Learning-Based Person Re-Identification Models: Are We There Yet?
论文作者
论文摘要
Intelligent Video-Sulbouthance(IVS)目前是计算机视觉和机器学习领域的活跃研究领域,并为监视操作员和法医视频调查人员提供了有用的工具。人重新识别(PREID)是IV中最关键的问题之一,它包括认识到网络中的摄像头是否已经在相机上观察到一个人。 Preid的解决方案有无数的应用程序,包括检索视频序列,显示了感兴趣的个体,甚至可以通过多个相机视图进行跟踪。已经提出了不同的技术来提高文献中Preid的性能,并且最近研究人员使用了深层神经网络(DNN),因为它们在类似的视力问题和测试时间快速执行方面具有令人信服的性能。鉴于重新识别解决方案的重要性和广泛应用,我们的目的是讨论该地区进行的工作,并提出对此任务的最新DNN模型的调查。我们介绍了每个模型的描述以及它们在一组基准数据集上的评估。最后,我们在这些模型中进行了详细的比较,随后是有关其局限性的一些讨论,这些讨论可以作为未来研究的指南。
Intelligent video-surveillance (IVS) is currently an active research field in computer vision and machine learning and provides useful tools for surveillance operators and forensic video investigators. Person re-identification (PReID) is one of the most critical problems in IVS, and it consists of recognizing whether or not an individual has already been observed over a camera in a network. Solutions to PReID have myriad applications including retrieval of video-sequences showing an individual of interest or even pedestrian tracking over multiple camera views. Different techniques have been proposed to increase the performance of PReID in the literature, and more recently researchers utilized deep neural networks (DNNs) given their compelling performance on similar vision problems and fast execution at test time. Given the importance and wide range of applications of re-identification solutions, our objective herein is to discuss the work carried out in the area and come up with a survey of state-of-the-art DNN models being used for this task. We present descriptions of each model along with their evaluation on a set of benchmark datasets. Finally, we show a detailed comparison among these models, which are followed by some discussions on their limitations that can work as guidelines for future research.