Neuroscientific insights about computer vision models: a concise review.

Biol Cybern

Department of Information Technology, Delhi Technological University, Delhi, India.

Published: December 2024

AI Article Synopsis

  • The study examines the historical development of biologically-inspired computational models, starting from the artificial neuron introduced in 1943, and highlights the challenges in replicating the complex biological visual system.
  • It discusses how contemporary computer vision models, like pre-trained deep neural networks and vision transformers, may not fully mimic biological systems but still incorporate some biological principles in their design and operation.
  • The paper emphasizes the importance of understanding these biological connections to enhance future bio-inspired computer vision models, focusing on innovations like biologically plausible neural networks and unsupervised learning mechanisms.

Article Abstract

The development of biologically-inspired computational models has been the focus of study ever since the artificial neuron was introduced by McCulloch and Pitts in 1943. However, a scrutiny of literature reveals that most attempts to replicate the highly efficient and complex biological visual system have been futile or have met with limited success. The recent state-of the-art computer vision models, such as pre-trained deep neural networks and vision transformers, may not be biologically inspired per se. Nevertheless, certain aspects of biological vision are still found embedded, knowingly or unknowingly, in the architecture and functioning of these models. This paper explores several principles related to visual neuroscience and the biological visual pathway that resonate, in some manner, in the architectural design and functioning of contemporary computer vision models. The findings of this survey can provide useful insights for building futuristic bio-inspired computer vision models. The survey is conducted from a historical perspective, tracing the biological connections of computer vision models starting with the basic artificial neuron to modern technologies such as deep convolutional neural network (CNN) and spiking neural networks (SNN). One spotlight of the survey is a discussion on biologically plausible neural networks and bio-inspired unsupervised learning mechanisms adapted for computer vision tasks in recent times.

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Source
http://dx.doi.org/10.1007/s00422-024-00998-9DOI Listing

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