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Local discriminant basis neural network ensembles

机译:局部判别基神经网络集成

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Abstract: In this paper, the possibility of using an orthogonal basis to train a collection of artificial neural networks in a face recognition task is discussed. This orthonormal basis is selected from a dictionary of orthonormal bases consisting of wavelet packets. Here, a basis is obtained by maximizing a certain discriminant measure among classes of training images. Once such a basis is selected, its basis vectors are ordered according to their power of discrimination and the first N most local discriminant basis vectors are retained for image decomposition purpose. By projecting all training images onto an individual basis vector of these N most discriminant basis vectors, N versions of the training set at different spatial/scale resolutions are then created. Next, N multilayer feed- forward neural networks are trained independently by N different resolution-specific training sets. After networks have been trained, they are combined to form an ensemble of networks. Our proposed method takes advantage of the fact that the dimensionality of the pattern recognition problem at hand is reduced, but the important information is still contained, and at the same time, some correlations between neighboring inputs are included. Furthermore, the performance of our proposed network is improved over a single neural network as a result of the ensemble and the nonlinear property of neural networks. Finally, this method is applied to a face recognition task using the Yale Face Database. From the experimental results , the performance of our method is better than a conventional back-propagation network and a wavelet packet parallel consensual neural network in terms of both computation and generalization ability. !19
机译:摘要:本文讨论了在人脸识别任务中使用正交基础训练人工神经网络集合的可能性。从包含小波包的正交基字典中选择该正交基。在此,通过使训练图像的类别之间的某种判别措施最大化来获得基础。一旦选择了这样的基础,就根据它们的辨别力对它的基础向量进行排序,并保留前N个最局部的判别基础向量以用于图像分解。通过将所有训练图像投影到这N个最有区别的基础向量中的一个单独的基础向量上,然后创建具有不同空间/比例分辨率的N个版本的训练集。接下来,由N个不同的分辨率特定的训练集独立训练N个多层前馈神经网络。对网络进行训练后,将它们合并以形成一个网络集成体。我们提出的方法利用了以下事实的优势:减少了手头模式识别问题的维数,但仍然包含重要信息,同时,还包括相邻输入之间的一些相关性。此外,由于神经网络的集成和非线性特性,我们提出的网络的性能比单个神经网络有所提高。最后,使用耶鲁人脸数据库将该方法应用于人脸识别任务。从实验结果来看,我们的方法在计算能力和泛化能力上均优于传统的反向传播网络和小波包并行感知神经网络。 !19

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