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A novel approach for detection of medial temporal discharges using blind source separation incorporating dictionary look up

机译:一种新的方法,用于使用盲源分离的中介时间放电的方法结合着字典查找

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In blind source separation (BSS), sparsity is proved to be very advantageous. If data is not sparse in its current domain, it can be modelled as sparse linear combinations of elements of a chosen dictionary. The choice of dictionary that sparsifies the data is very important. In this paper the dictionary is pre-specified based on chirplet modelling of various kinds of real epileptic spikes. Dictionary look up together with source separation is used to extract the closest source to the source of interest from the scalp EEG measurements. The algorithm has been tested on synthetic and real data consisting of epileptic discharges, and the results are compared with those of traditional BSS.
机译:在盲源分离(BSS)中,证明稀疏性是非常有利的。如果数据在其当前域中没有稀疏,则它可以被建模为所选字典的元素的稀疏线性组合。选择缩小数据的字典非常重要。在本文中,字典是根据各种真实癫痫尖峰的Chirplet建模预先指定的字典。词典与源分离一起查找,用于将最接近的源从头皮EEG测量中提取到感兴趣的源。该算法已经测试了由癫痫发出组成的合成和真实数据,结果与传统BSS的合成和实际数据进行了测试。

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