Brain-inspired automated visual object discovery and detection
Lichao Chen, Sudhir Singh, Thomas Kailath, and Vwani Roychowdhury

TL;DR
This paper introduces a scalable, brain-inspired unsupervised learning framework for discovering and detecting deformable objects in images, leveraging large-scale visual data and probabilistic models to improve robustness and efficiency.
Contribution
It presents a novel unsupervised learning approach using geometric associative networks for scalable, flexible object prototype discovery inspired by brain mechanisms.
Findings
Effective object prototype learning from large datasets
Robust detection under occlusion and view changes
More efficient than recent computer vision methods
Abstract
Despite significant recent progress, machine vision systems lag considerably behind their biological counterparts in performance, scalability, and robustness. A distinctive hallmark of the brain is its ability to automatically discover and model objects, at multiscale resolutions, from repeated exposures to unlabeled contextual data and then to be able to robustly detect the learned objects under various nonideal circumstances, such as partial occlusion and different view angles. Replication of such capabilities in a machine would require three key ingredients: (i) access to large-scale perceptual data of the kind that humans experience, (ii) flexible representations of objects, and (iii) an efficient unsupervised learning algorithm. The Internet fortunately provides unprecedented access to vast amounts of visual data. This paper leverages the availability of such data to develop a…
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