CVLGOct 30, 2019

Deep Learning vs. Traditional Computer Vision

arXiv:1910.13796v11032 citations
Originality Synthesis-oriented
AI Analysis

It addresses the relevance of classical computer vision knowledge for researchers and practitioners, but is incremental as it reviews existing hybrid approaches.

This paper analyzes the benefits and drawbacks of deep learning versus traditional computer vision techniques, reviewing hybrid methodologies that improve performance and tackle problems not suited to deep learning, such as in panoramic and 3D vision.

Deep Learning has pushed the limits of what was possible in the domain of Digital Image Processing. However, that is not to say that the traditional computer vision techniques which had been undergoing progressive development in years prior to the rise of DL have become obsolete. This paper will analyse the benefits and drawbacks of each approach. The aim of this paper is to promote a discussion on whether knowledge of classical computer vision techniques should be maintained. The paper will also explore how the two sides of computer vision can be combined. Several recent hybrid methodologies are reviewed which have demonstrated the ability to improve computer vision performance and to tackle problems not suited to Deep Learning. For example, combining traditional computer vision techniques with Deep Learning has been popular in emerging domains such as Panoramic Vision and 3D vision for which Deep Learning models have not yet been fully optimised

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