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Non-negative Structured Pyramidal Neural Network for Pattern Recognition

机译:非负结构金字塔神经网络用于模式识别

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Deep learning is a machine learning paradigm that has been widely exploited in the last years due to its high performance in many different problems, most of them related to computer vision. The Structured Pyramidal Neural Network (SPNN) is an artificial neural network which implements some of the deep learning concepts, such as multiple processing layers and receptive fields, with no need to pre-define the features of the problem as inputs. This network architecture has presented equivalent or even better results than other deep network approaches applied to solve specific tasks, but with a much lower computational cost. However, one of the SPNN limitations is the difficulty in contributing to human interpretations, since it has opaque learning, like most of the neural networks. Thus, we propose a non-negative model of the SPNN, to obtain better interpretability of the network learning. We restrict the values of the weights and biases of the network to be non-negative. The proposed model is evaluated in a gender recognition problem using the Face Recognition Technology (FERET) database. The results show that SPNN including non-negative constraint returns comparable recognition rates, but providing gains in the interpretability and stability of the model.
机译:深度学习是一种机器学习范式,由于其在许多不同问题中的高性能而在最近几年得到了广泛的利用,其中大多数问题都与计算机视觉有关。结构化金字塔神经网络(SPNN)是一个人工神经网络,它实现了一些深度学习概念,例如多个处理层和接受域,而无需预先定义问题的特征作为输入。与用于解决特定任务的其他深层网络方法相比,该网络体系结构已提供了等效甚至更好的结果,但计算成本却低得多。但是,SPNN的局限性之一是难以对人类的解释做出贡献,因为它像大多数神经网络一样具有不透明的学习能力。因此,我们提出了SPNN的非负模型,以获得更好的网络学习解释性。我们将网络的权重和偏差值限制为非负值。使用人脸识别技术(FERET)数据库在性别识别问题中评估了提出的模型。结果表明,包含非负约束的SPNN返回了可比的识别率,但在模型的可解释性和稳定性方面提供了收益。

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