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首页> 外文期刊>Applied Soft Computing >Dynamic multi-objective evolution of classifier ensembles for video face recognition
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Dynamic multi-objective evolution of classifier ensembles for video face recognition

机译:用于视频人脸识别的分类器集成的动态多目标进化

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摘要

Due to a limited control over changing operational conditions and personal physiology, systems used for video-based face recognition are confronted with complex and changing pattern recognition environments. Although a limited amount of reference data is initially available during enrollment, new samples often become available over time, through re-enrollment, post analysis and labeling of operational data, etc. Adaptive multi-classifier systems (AMCSs) are therefore desirable for the design and incremental update of facial models. For real time recognition of individuals appearing in video sequences, facial regions are captured with one or more cameras, and an AMCS must perform fast and efficient matching against the facial model of individual enrolled to the system. In this paper, an incremental learning strategy based on particle swarm optimization (PSO) is proposed to efficiently evolve heterogeneous classifier ensembles in response to new reference data. This strategy is applied to an AMCS where all parameters of a pool of fuzzy ARTMAP (FAM) neural network classifiers (i.e., a swarm of classifiers), each one corresponding to a particle, are co-optimized such that both error rate and network size are minimized. To provide a high level of accuracy over time while minimizing the computational complexity, the AMCS integrates information from multiple diverse classifiers, where learning is guided by an aggregated dynamical niching PSO (ADNPSO) algorithm that optimizes networks according both these objectives. Moreover, pools of FAM networks are evolved to maintain (1) genotype diversity of solutions around local optima in the optimization search space and (2) phenotype diversity in the objective space. Accurate and low cost ensembles are thereby designed by selecting classifiers on the basis of accuracy, and both genotype and phenotype diversity. For proof-of-concept validation, the proposed strategy is compared to AMCSs where incremental learning of FAM networks is guided through mono- and multi-objective optimization. Performance is assessed in terms of video-based error rate and resource requirements under different incremental learning scenarios, where new data is extracted from real-world video streams (IIT-NRC and MoBo). Simulation results indicate that the proposed strategy provides a level of accuracy that is comparable to that of using mono-objective optimization and reference face recognition systems, yet requires a fraction of the computational cost (between 16% and 20% of a mono-objective strategy depending on the data base and scenario).
机译:由于对变化的操作条件和个人生理的有限控制,用于基于视频的面部识别的系统面临着复杂且不断变化的模式识别环境。尽管在注册过程中最初只能获得数量有限的参考数据,但随着时间的推移,通过重新注册,后分析和操作数据标记等,通常会获得新的样本。因此,自适应多分类器系统(AMCS)对于设计是理想的以及面部模型的增量更新。为了实时识别视频序列中出现的个人,用一个或多个摄像机捕获面部区域,并且AMCS必须针对注册到系统中的个人的面部模型进行快速有效的匹配。本文提出了一种基于粒子群优化(PSO)的增量学习策略,以有效地响应新的参考数据来发展异构分类器集合。此策略应用于AMCS,在该AMCS中,共同优化每个模糊粒子(FAM)神经网络分类器(即一组分类器)的每个参数,每个参数对应于一个粒子,从而使错误率和网络大小均得到优化被最小化。为了在长时间内提供较高的准确性,同时最大程度地减少计算复杂性,AMCS集成了来自多个不同分类器的信息,其中,学习由聚合的动态NPS(ADNPSO)算法指导,该算法根据这两个目标优化了网络。而且,FAM网络池得到了发展,以维护(1)优化搜索空间中局部最优解周围的解的基因型多样性和(2)目标空间中的表型多样性。通过基于准确度以及基因型和表型多样性的选择器来设计准确和低成本的集合。为了进行概念验证,将提出的策略与AMCS进行比较,AMCS通过单目标和多目标优化指导FAM网络的增量学习。根据不同增量学习方案下基于视频的错误率和资源需求来评估性能,在这种情况下,将从真实视频流(IIT-NRC和MoBo)中提取新数据。仿真结果表明,所提出的策略可提供与使用单目标优化和参考人脸识别系统相当的准确性,但所需的计算成本却很小(单目标策略的16%至20%之间)取决于数据库和方案)。

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