论文标题

使用端到端训练有素的暹罗网络和小组卷积,预测Algonauts挑战中的人口神经活动

Predicting population neural activity in the Algonauts challenge using end-to-end trained Siamese networks and group convolutions

论文作者

Jacob, Georgin, Katti, Harish

论文摘要

Algonauts挑战是在视觉大脑区域衍生的表示差异矩阵(RDMS)的形式预测对象表示。我们使用暹罗网络和小组卷积的概念使用了定制的深度学习模型,以预测与一对图像相对应的神经距离。训练数据最好用最后一层计算的距离来解释。

The Algonauts challenge is about predicting the object representations in the form of Representational Dissimilarity Matrices (RDMS) derived from visual brain regions. We used a customized deep learning model using the concept of Siamese networks and group convolutions to predict neural distances corresponding to a pair of images. Training data was best explained by distances computed over the last layer.

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