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 ask the public to define the cost structure. We present the survey design and the data acquired along with an evaluation that also distinguishes between perspective (car passenger vs. external traffic participant) and gender. Using simulation based $F$-tests, we find highly significant differences between the groups. These differences have consequences on the reliable detection of pedestrians in a safety critical distance to the self-driving car. We discuss the ethical problems that are related to this approach and also discuss the problems emerging from human-machine interaction through the survey from a psychological point of view. Finally, we include comments from industry leaders in the field of AI safety on the applicability of survey based elements in the design of AI functionalities in automated driving.
翻译:深度神经网络(DNN)在解读图像数据方面取得了令人印象深刻的进展,因此,在自动驾驶等安全关键应用中使用图像数据是可以想象的,而且在某种程度上是现实的。从道德角度看,AI算法应该考虑到街道上的物体或主题的脆弱性,从“完全”到行人“高度脆弱”不等,例如道路本身,到行人“高度脆弱”。考虑到这一点的一个办法是界定一个语义类别与另一个语义类别混淆的成本,并使用成本决定规则来解释作为DNN的输出的概率。然而,如何界定成本结构是一个公开的问题,谁应该负责,从而确定AI-algorithms实际上会“看到”什么。作为一个可能的答案,我们遵循一种参与性办法,并设置一个在线调查,请公众界定成本结构。我们介绍调查设计和获得的数据,同时对前景(汽车旅客对外部交通参与者)和性别进行区分。我们用以$美元测试为基础的模拟对成本结构进行定义,从而界定成本上的差异,我们从汽车的距离的角度,我们从一个具有非常显著的逻辑上的差异。我们最后在从汽车的深度调查中,我们从对各种的逻辑上,我们从对各种的逻辑上的问题进行了一个非常严重的分析。