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Adaptive Object Recognition Using Context-A ware Genetic Algorithm Under Dynamic Environment

机译:自适应对象识别在动态环境下使用上下文 - 一种遗传算法

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Adaptation to dynamically changing environment is very important since advanced applications become pervasive and ubiquitous. This paper addresses a novel method of adaptive object recognition using environmental context-awareness and genetic algorithm and t-test. The proposed method tries to distinguish the category of input environment and decides an optimal classifier combination structure accordingly by GA and t-test. It stores its experiences in terms of the data context categories and the evolved artificial chromosomes so that the evolutionary knowledge can be used later. The proposed method has been evaluated in the area of face recognition. Most previous face recognition schemes define their system structures at the design phases, and the structures are not adaptive during operation. Such approaches usually show vulnerability under varying illumination environment. The context-awareness, modeling and identification of input data as context categories, is carried out by Fuzzy ART. The face data context is described based on the image attributes of light direction and brightness. The superiority of the proposed system is shown using four data sets: Inha, FERET and Yale database.
机译:自动改变环境的适应性非常重要,因为高级应用变得普遍性和普遍存在。本文使用环境背景感知和遗传算法和T检验来解决一种新颖的自适应物体识别方法。所提出的方法尝试区分输入环境的类别,并通过GA和T检验相应地确定最佳分类器组合结构。它在数据上下文类别和演进的人工染色体方面存储其经验,以便在以后可以使用进化知识。所提出的方法已经在人脸识别领域进行了评估。大多数先前的面部识别方案在设计阶段定义其系统结构,并且在操作期间结构不是自适应的。这种方法通常在不同的照明环境下显示出脆弱性。根据上下文类别的基于背景数据的上下文意识,建模和识别,由模糊艺术进行。基于光方向和亮度的图像属性描述面部数据上下文。使用四个数据集显示所提出的系统的优势:Inha,Feret和Yale数据库。

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