Low-cost micro-electromechanical accelerometers are widely used in navigation, robotics, and consumer devices for motion sensing and position estimation. However, their performance is often degraded by bias errors. To eliminate deterministic bias terms a calibration procedure is applied under stationary conditions. It requires accelerom- eter leveling or complex orientation-dependent calibration procedures. To overcome those requirements, in this paper we present a model-free learning-based calibration method that estimates accelerometer bias under stationary conditions, without requiring knowledge of the sensor orientation and without the need to rotate the sensors. The proposed approach provides a fast, practical, and scalable solution suitable for rapid field deployment. Experimental validation on a 13.39-hour dataset collected from six accelerometers shows that the proposed method consistently achieves error levels more than 52% lower than traditional techniques. On a broader scale, this work contributes to the advancement of accurate calibration methods in orientation-free scenarios. As a consequence, it improves the reliability of low-cost inertial sensors in diverse scientific and industrial applications and eliminates the need for leveled calibration.
翻译:低成本微机电加速度计广泛应用于导航、机器人及消费电子设备中的运动感知与位置估计。然而,其性能常因偏置误差而降低。为消除确定性偏置项,需在静态条件下进行标定流程,该流程通常要求加速度计调平或采用复杂的定向依赖标定程序。为突破这些限制,本文提出一种基于无模型学习的标定方法,可在静态条件下估计加速度计偏置,无需已知传感器方向,亦无需旋转传感器。所提方法提供了快速、实用且可扩展的解决方案,适用于现场快速部署。基于六台加速度计采集的13.39小时数据集进行的实验验证表明,该方法始终将误差水平降至传统技术52%以下。从更广泛意义而言,本研究推动了无定向场景下高精度标定方法的发展,从而提升了低成本惯性传感器在多样科学与工业应用中的可靠性,并消除了调平标定的需求。