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Learning visual features under motion invariance. | LitMetric

Learning visual features under motion invariance.

Neural Netw

Department of Information Engineering and Mathematics, University of Siena, Italy. Electronic address:

Published: June 2020

AI Article Synopsis

  • Humans are constantly exposed to visual data that includes motion information, but most computer vision algorithms focus only on static images, ignoring this valuable aspect.
  • The paper introduces a new theory of learning based on motion invariance, which draws parallels with principles in physics, suggesting it can enhance understanding and processing of visual data.
  • This approach allows for unsupervised video processing and the extraction of features through a multi-layer architecture, potentially leading to advancements in computer vision systems and insights into biological visual processing.

Article Abstract

Humans are continuously exposed to a stream of visual data with a natural temporal structure. However, most successful computer vision algorithms work at image level, completely discarding the precious information carried by motion. In this paper, we claim that processing visual streams naturally leads to formulate the motion invariance principle, which enables the construction of a new theory of learning that originates from variational principles, just like in physics. Such principled approach is well suited for a discussion on a number of interesting questions that arise in vision, and it offers a well-posed computational scheme for the discovery of convolutional filters over the retina. Differently from traditional convolutional networks, which need massive supervision, the proposed theory offers a truly new scenario for the unsupervised processing of video signals, where features are extracted in a multi-layer architecture with motion invariance. While the theory enables the implementation of novel computer vision systems, it also sheds light on the role of information-based principles to drive possible biological solutions.

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Source
http://dx.doi.org/10.1016/j.neunet.2020.03.013DOI Listing

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