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Optimal source coding removable noise elimination and natural coordinate system construction for general vector sources using replicator neural networks

机译:使用复制器神经网络的通用矢量源的最佳源代码可移动噪声消除和自然坐标系构建

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Abstract: A new universal one-chart smooth manifold model for vector information sources is introduced. Natural coordinates (a particular type of chart) for such data manifolds are then defined. Uniformly quantized natural coordinates form an optimal vector quantization code for a general vector source. Replicator neural networks (a specialized type of multilayer perceptron with three hidden layers) are the introduced. As properly configured examples of replicator networks approach minimum mean squared error (e.g., via training and architecture adjustment using randomly chosen vectors from the source), these networks automatically develop a mapping which, in the limit, produces natural coordinates for arbitrary source vectors. The new concept of removable noise (a noise model applicable to a wide variety of real-world noise processes) is then discussed. Replicator neural networks, when configured to approach minimum mean squared reconstruction error (e.g., via training and architecture adjustment on randomly chosen examples from a vector source, each with randomly chosen additive removable noise contamination), in the limit eliminate removable noise and produce natural coordinates for the data vector portions of the noise-corrupted source vectors. Consideration regarding selection of the dimension of a data manifold source model and the training/configuration of replicator neural networks are discussed.!20
机译:摘要:介绍了一种用于矢量信息源的通用单图平滑流形模型。然后定义此类数据流形的自然坐标(图表的特定类型)。统一量化的自然坐标形成了通用矢量源的最佳矢量量化代码。介绍了复制器神经网络(具有三个隐藏层的一种特殊类型的多层感知器)。当复制器网络的适当配置的示例接近最小均方误差时(例如,通过使用来自源的随机选择的向量通过训练和体系结构调整),这些网络会自动生成一个映射,该映射在限制内为任意源向量生成自然坐标。然后讨论了可移动噪声的新概念(适用于各种实际噪声过程的噪声模型)。复制器神经网络在配置为接近最小均方重构误差时(例如,通过对来自矢量源的随机选择的示例进行训练和体系结构调整,每个示例均带有随机选择的附加可移动噪声污染),在限制范围内消除了可移动噪声并产生自然坐标用于噪声损坏的源向量的数据向量部分。讨论了有关选择数据流形源模型的维数和复制器神经网络的训练/配置的注意事项!20

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