This paper proposes a transfer learning approach to recalibrate our previously developed Wheel Odometry Neural Network (WhONet) for vehicle positioning in environments where Global Navigation Satellite Systems (GNSS) are unavailable. The WhONet has been shown to possess the capability to learn the uncertainties in the wheel speed measurements needed for correction and accurate positioning of vehicles. These uncertainties may be manifested as tyre pressure changes from driving on muddy and uneven terrains or wheel slips. However, a common cause for concern for data-driven approaches, such as the WhONet model, is usually the inability to generalise the models to a new vehicle. In scenarios where machine learning models are trained in a specific domain but deployed in another domain, the model's performance degrades. In real-life scenarios, several factors are influential to this degradation, from changes to the dynamics of the vehicle to new pattern distributions of the sensor's noise, and bias will make the test sensor data vary from training data. Therefore, the challenge is to explore techniques that allow the trained machine learning models to spontaneously adjust to new vehicle domains. As such, we propose the Recalibrated-Wheel Odometry neural Network (R-WhONet), that adapts the WhONet model from its source domain (a vehicle and environment on which the model is initially trained) to the target domain (a new vehicle on which the trained model is to be deployed). Through a performance evaluation on several GNSS outage scenarios - short-term complex driving scenarios, and on longer-term GNSS outage scenarios. We demonstrate that a model trained in the source domain does not generalise well to a new vehicle in the target domain. However, we show that our new proposed framework improves the generalisation of the WhONet model to new vehicles in the target domains by up to 32%.
翻译:本文提出一种转移学习方法,以重新校正我们先前开发的32号轮式轨道测量神经网络(WhONet),用于在没有全球导航卫星系统的环境中对车辆定位进行轮速测量。 WhONet 显示具有学习车辆校正和准确定位所需的轮速测量的不确定性的能力。这些不确定性可能表现为轮胎压力的变化,从在泥土和不均的地形上驾车到轮滑滑动。然而,数据驱动方法,如WhONet模型的一个常见原因通常是无法将模型推广到新飞行器。在机器学习模型在特定领域受过训练但部署在另一个领域的情景中,该模型的性能会下降。在现实生活中,从车辆的动态到传感器噪音的新模式分布,这些不确定性将使测试传感器数据与培训数据不同。因此,挑战在于探索让经过训练的机器学习模型向新车域进行自发调整的技术。因此,我们建议在经过训练的轨道模型中先行调整的轨道定位模型,然后在经过训练的轨道轨道网络上显示新的轨道环境。