Overcoming the Domain Gap in Neural Action Representations
- URL: http://arxiv.org/abs/2112.01176v1
- Date: Thu, 2 Dec 2021 12:45:46 GMT
- Title: Overcoming the Domain Gap in Neural Action Representations
- Authors: Semih G\"unel and Florian Aymanns and Sina Honari and Pavan Ramdya and
Pascal Fua
- Abstract summary: 3D pose data can now be reliably extracted from multi-view video sequences without manual intervention.
We propose to use it to guide the encoding of neural action representations together with a set of neural and behavioral augmentations.
To reduce the domain gap, during training, we swap neural and behavioral data across animals that seem to be performing similar actions.
- Score: 60.47807856873544
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Relating animal behaviors to brain activity is a fundamental goal in
neuroscience, with practical applications in building robust brain-machine
interfaces. However, the domain gap between individuals is a major issue that
prevents the training of general models that work on unlabeled subjects.
Since 3D pose data can now be reliably extracted from multi-view video
sequences without manual intervention, we propose to use it to guide the
encoding of neural action representations together with a set of neural and
behavioral augmentations exploiting the properties of microscopy imaging. To
reduce the domain gap, during training, we swap neural and behavioral data
across animals that seem to be performing similar actions.
To demonstrate this, we test our methods on three very different multimodal
datasets; one that features flies and their neural activity, one that contains
human neural Electrocorticography (ECoG) data, and lastly the RGB video data of
human activities from different viewpoints.
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