CVAILGNCMLApr 20, 2020

Five Points to Check when Comparing Visual Perception in Humans and Machines

arXiv:2004.09406v334 citations
AI Analysis

This work addresses methodological issues for researchers conducting comparative studies in visual reasoning, offering incremental improvements to experimental design.

The paper tackles the challenge of designing experiments to compare visual perception in humans and machines, proposing a checklist to avoid pitfalls and demonstrating through case studies that previously observed differences can be resolved with equitable conditions.

With the rise of machines to human-level performance in complex recognition tasks, a growing amount of work is directed towards comparing information processing in humans and machines. These studies are an exciting chance to learn about one system by studying the other. Here, we propose ideas on how to design, conduct and interpret experiments such that they adequately support the investigation of mechanisms when comparing human and machine perception. We demonstrate and apply these ideas through three case studies. The first case study shows how human bias can affect how we interpret results, and that several analytic tools can help to overcome this human reference point. In the second case study, we highlight the difference between necessary and sufficient mechanisms in visual reasoning tasks. Thereby, we show that contrary to previous suggestions, feedback mechanisms might not be necessary for the tasks in question. The third case study highlights the importance of aligning experimental conditions. We find that a previously-observed difference in object recognition does not hold when adapting the experiment to make conditions more equitable between humans and machines. In presenting a checklist for comparative studies of visual reasoning in humans and machines, we hope to highlight how to overcome potential pitfalls in design or inference.

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