Deep Auto-encoder with Neural Response
Xuming Ran, Jie Zhang, Ziyuan Ye, Haiyan Wu, Qi Xu, Huihui Zhou,, Quanying Liu

TL;DR
This paper introduces DAE-NR, a unified deep autoencoder framework that integrates neural response data and image reconstruction to enhance both visual reconstruction quality and neural representation similarity.
Contribution
The study proposes a novel integrated framework combining ANN and neural data, improving image reconstruction and neural similarity in a unified model.
Findings
Joint learning improves image reconstruction performance.
Joint learning increases neural representation similarity.
DAE-NR offers a new perspective on integrating computer vision and neuroscience.
Abstract
Artificial neural network (ANN) is a versatile tool to study the neural representation in the ventral visual stream, and the knowledge in neuroscience in return inspires ANN models to improve performance in the task. However, it is still unclear how to merge these two directions into a unified framework. In this study, we propose an integrated framework called Deep Autoencoder with Neural Response (DAE-NR), which incorporates information from ANN and the visual cortex to achieve better image reconstruction performance and higher neural representation similarity between biological and artificial neurons. The same visual stimuli (i.e., natural images) are input to both the mice brain and DAE-NR. The encoder of DAE-NR jointly learns the dependencies from neural spike encoding and image reconstruction. For the neural spike encoding task, the features derived from a specific hidden layer of…
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Taxonomy
TopicsNeural dynamics and brain function · Visual perception and processing mechanisms · CCD and CMOS Imaging Sensors
