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Integration of orthogonal feature detectors in parameter learning of artificial neural networks to improve robustness and the evaluation on hand-written digit recognition tasks

机译:在人工神经网络的参数学习中集成正交特征检测器,以提高鲁棒性和手写数字识别任务的评估

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We propose to use orthogonal feature detectors in artificial neural networks for the robustness of performance under noisy conditions. The motivation is grounded on the principle that orthogonal decomposition is the most efficient among all representation of a signal. In this paper, we incorporate orthogonalization in the process of learning the network weights. In our implementation, the constraint of orthogonality is enforced by applying Gram-Schmidt processes to the feature detectors during network training. The proposed method is evaluated on MNIST database for hand-written digit recognition. The images in the training set are not corrupted, while the images in the test set are artificially corrupted with white noises. Experimental results show that the proposed orthogonalization method achieves 56.4% relative improvement in recognition error rate over a conventional learning method without orthogonalization. Given that the clean training data and the noisy test data are clearly mismatched, such an improvement with artificial neural networks is indeed very remarkable. For engineering insight, we devise a visualization tool which illuminates interesting features of the neurons learned by the proposed method.
机译:我们建议在人工神经网络中使用正交特征探测器,以便在嘈杂的条件下进行性能的鲁棒性。动机基于正交分解的原理是在信号的所有表示中最有效的。在本文中,我们在学习网络权重的过程中纳入正交化。在我们的实现中,通过将Gram-Schmidt进程应用于网络训练期间的特征探测器来强制执行正交性的约束。该方法在Mnist数据库中评估了用于手写的数字识别。训练集中的图像不会破坏,而测试集中的图像具有白色噪声的人为破坏。实验结果表明,拟议的正交化方法在没有正交化的传统学习方法上实现了56.4%的识别误差率的相对改善。鉴于清洁训练数据和嘈杂的测试数据显然不匹配,这种对人工神经网络的改善确实非常显着。为了工程洞察力,我们设计了一种可视化工具,它照亮了所提出的方法学到的神经元的有趣特征。

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