Zhang Cuicui, Liang Xuefeng, Matsuyama Takashi
Graduate School of Informatices, Kyoto University, Kyoto 606-8501, Japan.
Sensors (Basel). 2014 Dec 8;14(12):23509-23538. doi: 10.3390/s141223509.
Multi-camera networks have gained great interest in video-based surveillance systems for security monitoring, access control, etc. Person re-identification is an essential and challenging task in multi-camera networks, which aims to determine if a given individual has already appeared over the camera network. Individual recognition often uses faces as a trial and requires a large number of samples during the training phrase. This is difficult to fulfill due to the limitation of the camera hardware system and the unconstrained image capturing conditions. Conventional face recognition algorithms often encounter the "small sample size" (SSS) problem arising from the small number of training samples compared to the high dimensionality of the sample space. To overcome this problem, interest in the combination of multiple base classifiers has sparked research efforts in ensemble methods. However, existing ensemble methods still open two questions: (1) how to define diverse base classifiers from the small data; (2) how to avoid the diversity/accuracy dilemma occurring during ensemble. To address these problems, this paper proposes a novel generic learning-based ensemble framework, which augments the small data by generating new samples based on a generic distribution and introduces a tailored 0-1 knapsack algorithm to alleviate the diversity/accuracy dilemma. More diverse base classifiers can be generated from the expanded face space, and more appropriate base classifiers are selected for ensemble. Extensive experimental results on four benchmarks demonstrate the higher ability of our system to cope with the SSS problem compared to the state-of-the-art system.
多摄像头网络在用于安全监控、访问控制等的基于视频的监控系统中引起了极大的关注。人员重新识别是多摄像头网络中的一项重要且具有挑战性的任务,其目的是确定给定个体是否已在摄像头网络中出现过。个体识别通常以面部作为尝试,并且在训练阶段需要大量样本。由于摄像头硬件系统的限制和无约束的图像采集条件,这很难实现。传统的人脸识别算法经常遇到“小样本量”(SSS)问题,该问题源于与样本空间的高维度相比训练样本数量较少。为了克服这个问题,对多个基础分类器组合的兴趣引发了集成方法的研究工作。然而,现有的集成方法仍然存在两个问题:(1)如何从小数据中定义多样化的基础分类器;(2)如何避免在集成过程中出现多样性/准确性困境。为了解决这些问题,本文提出了一种新颖的基于通用学习的集成框架,该框架通过基于通用分布生成新样本来扩充小数据,并引入一种定制的0-1背包算法来缓解多样性/准确性困境。可以从扩展的面部空间中生成更多样化的基础分类器,并为集成选择更合适的基础分类器。在四个基准上的大量实验结果表明,与现有系统相比,我们的系统在应对SSS问题方面具有更高的能力。