Artificial Neural Networks Implementation in Digital Signal Processing Courses

S. Vishnyakov
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引用次数: 1

Abstract

The paper is dedicated to the implementation of the artificial neural networks in the laboratories on digital signal processing. The method described is based on artificial neural network implementation. Different architectures and types of artificial neural networks are compared. The training and testing sequences generation problem is discussed. The aim of the irregular mesh coverage of the two-dimensional signal (frame) is to decrease computational cost for the further motion detection between frames. The benefits of the artificial neural network usage are made clear and understandable for the students. Generalized results obtained may be used for pattern recognition, data compression, multidimensional look-up table interpolation. The educational impact of the method proposed is also discussed.
人工神经网络在数字信号处理课程中的应用
本文致力于人工神经网络在数字信号处理实验室中的实现。该方法是基于人工神经网络实现的。比较了不同结构和类型的人工神经网络。讨论了训练和测试序列的生成问题。对二维信号(帧)进行不规则网格覆盖的目的是为了减少帧间进一步运动检测的计算量。使用人工神经网络的好处对学生来说是清晰易懂的。得到的广义结果可用于模式识别、数据压缩、多维查表插值。本文还讨论了所提出方法的教育影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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