Common domain shift problem formulations consider the integration of multiple source domains, or the target domain during training. Regarding the generalization of machine learning models between different car interiors, we formulate the criterion of training in a single vehicle: without access to the target distribution of the vehicle the model would be deployed to, neither with access to multiple vehicles during training. We performed an investigation on the SVIRO dataset for occupant classification on the rear bench and propose an autoencoder based approach to improve the transferability. The autoencoder is on par with commonly used classification models when trained from scratch and sometimes out-performs models pre-trained on a large amount of data. Moreover, the autoencoder can transform images from unknown vehicles into the vehicle it was trained on. These results are corroborated by an evaluation on real infrared images from two vehicle interiors.
翻译:通用域转移问题配方考虑将多个源域或培训期间的目标域进行整合。关于不同汽车内地之间机械学习模型的通用化,我们制定了单一车辆培训标准:如果无法获得车辆的目标分布,该模型将部署到,在培训期间也无法使用多辆车。我们对SVIRO数据集进行了调查,以便在后座上对占用者进行分类,并提议采用基于自动编码器的方法来改进可转移性。自动编码器与常用的分类模型相同,因为从零开始培训,有时是用大量数据预先培训的超模模型。此外,自动编码器可以将未知车辆的图像转化为它所培训的车辆。这些结果通过对两部车辆内地的真实红外图像的评估得到证实。