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Face recognition using modular Neural Networks

机译:面部识别使用模块化神经网络

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摘要

Monolithic Neural Networks are generally prone to sub-optimal performance in highly complex and dimensional problems that hinders learning. Modular Neural Networks employ a divide and conquer strategy to convert a complex problem into a set of simpler problems. In classification this means focus upon local features and making of simpler feature space. The simpler problems in a modular architecture are solved by different modules or experts, each of whose outputs are integrated to give the final output. Each module is a combination of feature extraction technique and classifier, and returns a matching score as output. The paper presents a two step modular architecture. At the first step the facial image is decomposed into 3 sub-images. At the second stage each sub-image is solved redundantly by two different neural network models and features extraction techniques. Two step integration is performed using probabilistic sum, min, max, product and polling integration techniques. The proposed modular architecture gives improvised matching score with all integration techniques.
机译:单片神经网络通常容易发生在妨碍学习的高度复杂和尺寸问题中的次优性能。模块化神经网络采用鸿沟并征服策略来将复杂问题转换为一系列更简单的问题。在分类中,这意味着焦点在本地特征和制作更简单的特征空间。模块化架构中的更简单问题由不同的模块或专家求解,每个输出都集成到最终输出。每个模块都是特征提取技术和分类器的组合,并将匹配分数作为输出返回。本文呈现了两步模块化架构。在第一步,面部图像被分解成3个子图像。在第二阶段,通过两个不同的神经网络模型和特征提取技术冗余地解决了每个子图像。使用概率和概率,最小,最大,产品和轮询集成技术进行两步集成。所提出的模块化架构与所有集成技术都提供了简易匹配的分数。

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