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Attention selection using global topological properties based on pulse coupled neural network

机译:基于脉冲耦合神经网络的全局拓扑属性的注意力选择

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摘要

Topological properties are with invariance and take priority over other features, which play an important role in cognition. This paper introduces a new attention selection model called TPA (topological properties-based attention), which adopts topological properties and quaternion. In TPA, using Unit-linking PCNN (Pulse Coupled Neural Network) hole-filter expresses an important topological property (the connectivity) in visual attention selection. Meanwhile, using the quaternion Fourier transform based phase spectrum of an image or a frame in a video obtains the spatio-temporal saliency map, which shows the result of attention selection. Adjusting the weight of a topological channel can change its influence. The experimental results show that TPA reflects the real attention selection more accurately than PQFT (Phase spectrum of Quaternion Fourier Transform).
机译:拓扑属性具有不变性,并且优先于其他功能,而其他功能在认知中起着重要作用。本文介绍了一种新的注意力选择模型,称为TPA(基于拓扑属性的注意力),它采用了拓扑属性和四元数。在TPA中,使用单元链接PCNN(脉冲耦合神经网络)孔过滤器在视觉注意选择中表达了重要的拓扑属性(连接性)。同时,使用基于四元数傅立叶变换的视频或视频中的帧的相位谱获得时空显着图,该图显示了注意力选择的结果。调整拓扑通道的权重可以更改其影响。实验结果表明,TPA可以比PQFT(四元数傅立叶变换的相位谱)更准确地反映真实的注意力选择。

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