What should AI see? Using the Public's Opinion to Determine the Perception of an AI
Robin Chan, Radin Dardashti, Meike Osinski, Matthias Rottmann, Dominik, Br\"uggemann, Cilia R\"ucker, Peter Schlicht, Fabian H\"uger, Nikol Rummel,, Hanno Gottschalk

TL;DR
This paper explores how public opinion can inform the perception framework of AI in autonomous driving by using surveys to define cost structures for object detection, highlighting significant perceptual differences among groups and discussing ethical implications.
Contribution
It introduces a participatory survey method to determine cost structures for AI perception, addressing ethical and practical challenges in safety-critical applications.
Findings
Significant perceptual differences between groups in pedestrian detection
Public opinion influences AI perception models
Discussion on ethical and psychological implications
Abstract
Deep neural networks (DNN) have made impressive progress in the interpretation of image data, so that it is conceivable and to some degree realistic to use them in safety critical applications like automated driving. From an ethical standpoint, the AI algorithm should take into account the vulnerability of objects or subjects on the street that ranges from "not at all", e.g. the road itself, to "high vulnerability" of pedestrians. One way to take this into account is to define the cost of confusion of one semantic category with another and use cost-based decision rules for the interpretation of probabilities, which are the output of DNNs. However, it is an open problem how to define the cost structure, who should be in charge to do that, and thereby define what AI-algorithms will actually "see". As one possible answer, we follow a participatory approach and set up an online survey to…
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Taxonomy
TopicsEthics and Social Impacts of AI · Human-Automation Interaction and Safety · Adversarial Robustness in Machine Learning
