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Incremental adaptation of fuzzy ARTMAP neural networks for video-based face classification

机译:基于视频的人脸分类的模糊ARTMAP神经网络的增量自适应

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In many practical applications, new training data is acquired at different points in time, after a classification system has originally been trained. For instance, in face recognition systems, new training data may become available to enroll or to update knowledge of an individual. In this paper, a neural network classifier applied to video-based face recognition is adapted through supervised incremental learning of real-world video data. A training strategy based on particle swarm optimization is employed to co-optimize the weights, architecture and hyperparameters of the fuzzy ARTMAP network during incremental learning of new data. The performance of fuzzy ARTMAP is compared under different class update scenarios when incremental learning is performed according to 3 cases — (A) hyperparameters set to standard values, (B) hyperparameters optimized only at the beginning of the learning process with all classes, and (C) hyperparameters re-optimized whenever new training data becomes available. Overall results indicate that when samples from each individual enrolled to the system are employed for optimization, a higher classification rate is achieved and the solutions produced are more robust to variations caused by pattern presentation order. When all classes are refined equally, this is true with incremental learning according to case (C), whereas, if one class is refined at a time, best performance is obtained with case (B). However, optimizing hyperparameters requires more resources: several training sequences are needed to find the optimal solution and fuzzy ARTMAP with hyperparameters optimized according to classification rate tends to generate a high number of category nodes over longer convergence time.
机译:在许多实际应用中,在最初训练分类系统之后,会在不同的时间点获取新的训练数据。例如,在面部识别系统中,新的训练数据可以变得可用于注册或更新个人的知识。在本文中,通过监督现实世界视频数据的增量学习,对应用于基于视频的面部识别的神经网络分类器进行了调整。在新数据的增量学习过程中,采用了基于粒子群优化的训练策略来共同优化模糊ARTMAP网络的权重,结构和超参数。当根据3种情况进行增量学习时,在不同的班级更新方案下比较模糊ARTMAP的性能-(A)将超参数设置为标准值,(B)仅在学习过程开始时对所有班级进行优化的超参数,以及( C)只要有新的训练数据,就重新优化超参数。总体结果表明,当使用来自每个已注册系统的个人的样本进​​行优化时,可以实现更高的分类率,并且所生成的解决方案对于由模式表示顺序引起的变化更健壮。当所有类均等地提炼时,根据情况(C)进行增量学习时,情况确实如此,而如果一次提炼一个类,则在情况(B)下获得最佳性能。但是,优化超参数需要更多资源:需要多个训练序列才能找到最佳解决方案,并且根据分类速率优化超参数的模糊ARTMAP往往会在较长的收敛时间上生成大量类别节点。

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