Improving action classification with brain-inspired deep networks
Aidas Aglinskas, Stefano Anzellotti

TL;DR
This paper investigates how brain-inspired deep networks with separate streams for body and scene perception improve action classification, demonstrating that such architectures better mimic human performance and utilize information from both sources effectively.
Contribution
The study introduces a novel brain-inspired deep network architecture with domain-specific streams for body and scene processing, enhancing action recognition performance.
Findings
Brain-inspired networks outperform standard DNNs in action recognition.
Separate streams for body and scene improve robustness across stimulus variations.
Human performance is better with body-only stimuli compared to background-only stimuli.
Abstract
Action recognition is also key for applications ranging from robotics to healthcare monitoring. Action information can be extracted from the body pose and movements, as well as from the background scene. However, the extent to which deep neural networks (DNNs) make use of information about the body and information about the background remains unclear. Since these two sources of information may be correlated within a training dataset, DNNs might learn to rely predominantly on one of them, without taking full advantage of the other. Unlike DNNs, humans have domain-specific brain regions selective for perceiving bodies, and regions selective for perceiving scenes. The present work tests whether humans are thus more effective at extracting information from both body and background, and whether building brain-inspired deep network architectures with separate domain-specific streams for body…
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Taxonomy
TopicsHuman Pose and Action Recognition · EEG and Brain-Computer Interfaces · Action Observation and Synchronization
