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Addressing appearance change in outdoor robotics with adversarial domain adaptation

机译:通过对抗域适应解决室外机器人的外观变化

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Appearance changes due to weather and seasonal conditions represent a strong impediment to the robust implementation of machine learning systems in outdoor robotics. While supervised learning optimises a model for the training domain, it will deliver degraded performance in application domains that underlie distributional shifts caused by these changes. Traditionally, this problem has been addressed via the collection of labelled data in multiple domains or by imposing priors on the type of shift between both domains. We frame the problem in the context of unsupervised domain adaptation and develop a framework for applying adversarial techniques to adapt popular, state-of-the-art network architectures with the additional objective to align features across domains. Moreover, as adversarial training is notoriously unstable, we first perform an extensive ablation study, adapting many techniques known to stabilise generative adversarial networks, and evaluate on a surrogate classification task with the same appearance change. The distilled insights are applied to the problem of free-space segmentation for motion planning in autonomous driving.
机译:天气和季节性条件导致的外观变化代表了对室外机器人机器学习系统的强大实施的强烈障碍。虽然监督学习优化了培训域的模型,但它将在应用领域中提供劣化的性能,这些域中具有这些变化引起的分布换档。传统上,通过在多个域中的标记数据的集合或通过对两个域之间的偏移类型的提示来解决此问题。我们在无监督域适应的背景下框架问题,并开发一个框架,用于应用逆境技术,以适应流行的,最先进的网络架构,其中附加目的是跨域对齐功能。此外,由于对抗训练是众所周知的不稳定,我们首先进行广泛的消融研究,适应已知许多稳定生成的对抗网络的技术,并评估具有相同外观变化的代理分类任务。蒸馏洞察力适用于自动驾驶中运动规划的自由空间分割问题。

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