We present an application of conformal prediction, a form of uncertainty quantification with guarantees, to the detection of railway signals. State-of-the-art architectures are tested and the most promising one undergoes the process of conformalization, where a correction is applied to the predicted bounding boxes (i.e. to their height and width) such that they comply with a predefined probability of success. We work with a novel exploratory dataset of images taken from the perspective of a train operator, as a first step to build and validate future trustworthy machine learning models for the detection of railway signals.
翻译:我们为探测铁路信号采用了符合要求的预测,这是一种有保证的不确定量化形式,测试了最先进的建筑,最有希望的建筑经过了符合要求的过程,对预测的捆绑箱(即其高度和宽度)进行了校正,使其符合预先确定的成功概率。我们使用从火车运营商的角度拍摄的图像的新的探索数据集,作为建立和验证未来可信赖的铁路信号探测机学习模型的第一步。