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A CNN-Based Computational Encoding Model for Human V2 Cortex

机译:人v2皮质的基于CNN的计算编码模型

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The computation encoding models, used to predict human brain activity from natural image stimuli, can be performed as a function simulator of human vision information process. In the traditional computational encoding models for human V2 cortex, due to the lack of higher visual feature and information processing hierarchy, it is difficult to achieve expected predict performance. Here, activated by the properties of CNN, we trained a CNN as an encoding model for human V2 cortex, which can be trained for predicting stimuli-evoked response measured by functional magnetic resonance imaging. The results reveal that the CNN-based encoding model can achieve a higher performance, proves that CNN have advantages in encoding higher visual areas. This finding provides a new framework for the human vision encoding models and helps to further understand of the human vision mechanism from the computational point view.
机译:可以作为人类视觉信息过程的函数模拟器来执行用于预测自然图像刺激的人脑活动的计算编码模型。在传统的人V2皮质计算编码模型中,由于缺乏较高的视觉特征和信息处理层次结构,难以实现预期的预测性能。这里,通过CNN的性质激活,我们培训了CNN作为人V2皮质的编码模型,其可以接受通过功能磁共振成像测量的刺激诱发的响应。结果表明,基于CNN的编码模型可以实现更高的性能,证明CNN在编码更高的视觉区域方面具有优势。该发现为人类视觉编码模型提供了新的框架,并有助于进一步了解从计算点视图的人体视觉机制。

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