深度学习优化的智能手机运动状态识别与自适应非完整性约束车载导航

Deep learning-assisted smartphone motion state recognition and adaptive non-holonomic constraint for vehicle navigation

  • 摘要: 在GNSS拒止环境下,智能手机惯性导航定位存在严重的累积误差,而传统非完整性约束(non-holonomic constraint,NHC)在转弯等运动状态下有效性不足,因此,本文提出了一种基于深度学习状态识别和NHC增强方法. 该方法利用一维卷积残差网络(ResNet-1D)与长短期记忆网络(long short-term memory network,LSTM)融合模型,通过智能手机低成本微机电系统(micro-electro-mechanical system,MEMS)惯性测量单元(inertial measurement unit,IMU)数据准确识别车辆直行与转弯状态,进而动态调整扩展卡尔曼滤波(extended Kalman filter,EKF)中NHC的观测噪声协方差,强化直行约束、放宽转弯约束. 实验表明,该状态识别模型将转弯识别准确率从约65%提升至95%左右,并通过车载实测数据,验证了在GNSS拒止环境下,本方法与传统Z轴陀螺仪积分方法相比,能够将水平相对定位精度提升36.4%~74.6%.本研究通过智能识别运动状态并自适应调整NHC,有效提升了智能手机在复杂场景的导航性能,为低成本高精度定位提供了新途径.

     

    Abstract: Under GNSS-denied environments, the inertial navigation of smartphones faces significant cumulative errors. Traditional non-holonomic constraints (NHC) are also ineffective during dynamic maneuvers such as turns. To address these issues, this paper proposes a deep learning-assisted NHC enhancement method. This approach utilizes a fusion model of a one-dimensional convolutional residual network (ResNet-1D) and a long short-term memory (LSTM) network to accurately recognize vehicle straight and turning states from smartphone inertial measurement unit (IMU) data. This recognition enables dynamic adjustment of the observation noise covariance in the NHC of the extended Kalman filter (EKF), strengthening constraints during straight driving and relaxing them during turns. Experimental results show that the proposed state recognition model improves turning recognition accuracy from about 65% to approximately 95%. Furthermore, real-world test data demonstrate that, under GNSS-denied conditions, the method achieves a 36.4% to 74.6% improvement in horizontal relative positioning accuracy compared to the traditional Z-axis gyroscope integration method. This study enhances smartphone navigation performance in complex environments through intelligent motion state recognition and adaptive NHC adjustment, offering a new approach for low-cost, high-precision positioning.

     

/

返回文章
返回