Supervised Learning with Small Training Set for Gesture Recognition by Spiking Neural Networks

Natabara Máté Gyöngyössy, Márk Domonkos, J. Botzheim, P. Korondi
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引用次数: 11

Abstract

This paper proposes a novel supervised learning algorithm for spiking neural networks. The algorithm combines Hebbian learning and least mean squares method and it works well for small training datasets and short training cycles. The proposed method is applied in human-robot interaction for recognizing musical hand gestures based on the work of Zoltán Kodaly. The MNIST dataset is also used as a benchmark test to´ verify the proposed algorithm’s capability to outperform shallow ANN architectures. Experiments with the robot also provided promising results by recognizing the human hand signs correctly.
基于脉冲神经网络的小训练集监督学习手势识别
提出了一种新的脉冲神经网络监督学习算法。该算法将Hebbian学习和最小均二乘法相结合,在训练数据集小、训练周期短的情况下均能取得较好的效果。基于Zoltán Kodaly的工作,将该方法应用于人机交互中音乐手势的识别。MNIST数据集也被用作基准测试,以验证所提出的算法优于浅层人工神经网络架构的能力。机器人的实验也提供了有希望的结果,正确识别人类的手势。
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