CVAILGMay 10, 2018

Deep Nets: What have they ever done for Vision?

arXiv:1805.04025v4108 citations
Originality Synthesis-oriented
AI Analysis

It highlights limitations of current deep learning approaches for computer vision researchers and practitioners, emphasizing the need for better evaluation methods as algorithms are increasingly deployed in real-world applications.

This opinion paper critiques deep neural networks for vision, arguing they perform well on specific benchmark tasks but lack the generality and adaptability of human vision, and are unlikely to overcome the combinatorial explosion problem in natural images.

This is an opinion paper about the strengths and weaknesses of Deep Nets for vision. They are at the heart of the enormous recent progress in artificial intelligence and are of growing importance in cognitive science and neuroscience. They have had many successes but also have several limitations and there is limited understanding of their inner workings. At present Deep Nets perform very well on specific visual tasks with benchmark datasets but they are much less general purpose, flexible, and adaptive than the human visual system. We argue that Deep Nets in their current form are unlikely to be able to overcome the fundamental problem of computer vision, namely how to deal with the combinatorial explosion, caused by the enormous complexity of natural images, and obtain the rich understanding of visual scenes that the human visual achieves. We argue that this combinatorial explosion takes us into a regime where "big data is not enough" and where we need to rethink our methods for benchmarking performance and evaluating vision algorithms. We stress that, as vision algorithms are increasingly used in real world applications, that performance evaluation is not merely an academic exercise but has important consequences in the real world. It is impractical to review the entire Deep Net literature so we restrict ourselves to a limited range of topics and references which are intended as entry points into the literature. The views expressed in this paper are our own and do not necessarily represent those of anybody else in the computer vision community.

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