A. Babolhavaeji, S. Karimi, A. Ghaffari, A. Hamidinekoo, B. Vosoughi-Vahdat
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引用次数: 1
摘要
下颞叶皮层是大脑中最重要的部分,对视觉刺激的反应起着重要的作用。在本研究中,利用IT皮质区域的神经元尖峰进行对象解码。记录123个IT皮质神经元的单单位活动(SUA)。首先建立伪种群发射率向量,然后进行降维,利用人工神经网络对目标进行解码。在不同的窗长(50 ms ~ 200 ms)和不同的窗步(25 ms ~ 100 ms)下计算对象解码精度。结果表明,150 ms的长度和50 ms的窗步长可以获得最佳的平均精度。
Optimal temporal resolution for decoding of visual stimuli in inferior temporal cortex
Inferior temporal (IT) cortex is the most important part of the brain and plays an important role in response to visual stimuli. In this study, object decoding has been performed using neuron spikes in IT cortex region. Single Unit Activity (SUA) was recorded from 123 neurons in IT cortex. Pseudo-population firing rate vectors were created, then dimension reduction was done and an Artificial Neural Network (ANN) was used for object decoding. Object decoding accuracy was calculated for various window lengths from 50 ms to 200 ms and various window steps from 25 ms to 100 ms. The results show that 150 ms length and 50 ms window step size gives an optimum performance in average accuracy.