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CortexNet: Convolutional Neural Network with Visual Cortex in human brain

机译:CortexNet:人脑中具有视觉皮质的卷积神经网络

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The current Convolutional Neural Networks (CNN) [1-4] aim to extend the depth of the network for processing huge data sets effectively. However, they only partially imitate brain function, such as delegating weights by convolution operation. We propose a new CNN architecture by introducing a Cortex block, which mimics the human visual connectome [5]. Extracting features from binocular information is repeated until the end of top-level cell, Inferior Temporal. With the learning process, a human brain activates some neurons by following the results of predicting the future input data. Based on reflecting these brain functions, we design a Cortex block with general methods in CNN, such as convolutional layer and subsampling layer. Cortex block reduces the number of learnable parameters as well as observes two main functions of human visual system. Cortex blocks stacked up to make CortexNet, showed performance parity with ResNet and SENet on CIFAR-10 and Tiny-ImageNet.
机译:当前的卷积神经网络(CNN)[1-4]旨在扩展网络的深度,以有效地处理庞大的数据集。但是,它们仅部分模仿大脑功能,例如通过卷积操作委派重物。我们通过引入模拟人类视觉连接套的Cortex块,提出了一种新的CNN体​​系结构。重复从双目信息中提取特征,直到顶层细胞下颞骨的末端。在学习过程中,人脑通过遵循预测未来输入数据的结果来激活一些神经元。在反映这些大脑功能的基础上,我们使用CNN中的常规方法(例如卷积层和子采样层)设计了一个Cortex块。皮质区减少了可学习参数的数量,并观察了人类视觉系统的两个主要功能。堆叠在一起构成CortexNet的Cortex块在CIFAR-10和Tiny-ImageNet上表现出与ResNet和SENet相当的性能。

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