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Real-time localization of mobile device by filtering method for sensor fusion

机译:传感器融合方法通过过滤方法实时定位

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Most of the applications with mobile devices require self-localization of the devices. GPS cannot be used in indoor environment, the positions of mobile devices are estimated autonomously by using IMU. Since the self-localization is based on IMU of low accuracy, and then the self-localization in indoor environment is still challenging. The self-localization method using images have been developed, and the accuracy of the method is increasing. This paper develops the self-localization method without GPS in indoor environment by integrating sensors, such as IMU and cameras, on mobile devices simultaneously. The proposed method consists of observations, forecasting and filtering. The position and velocity of the mobile device are defined as a state vector. In the self-localization, observations correspond to observation data from IMU and camera (observation vector), forecasting to mobile device moving model (system model) and filtering to tracking method by inertial surveying and coplananty condition and inverse depth model (observation model). Positions of a mobile device being tracked are estimated by system model (forecasting step), which are assumed as linearly moving model. Then estimated positions are optimized referring to the new observation data based on likelihood (filtering step). The optimization at filtering step corresponds to estimation of the maximum a posterior probability. Particle filter are utilized for the calculation through forecasting and filtering steps. The proposed method is applied to data acquired by mobile devices in indoor environment. Through the experiments, the high performance of the method is confirmed.
机译:大多数移动设备的应用程序都需要设备的自定位。 GPS不能在室内环境中使用的,移动设备的位置,通过使用IMU自主估计。由于自定位是基于精度低,然后自定位在室内环境中的IMU仍然具有挑战性。使用图像自身的定位方法已经被开发,并且该方法的准确度在增加。本文通过集成传感器,如IMU及相机,上同时移动设备的发展在室内环境中没有GPS的自定位方法。所提出的方法包括观察,预测和滤波。的位置和所述移动设备的速度被定义为状态向量。在自定位,观测对应于来自IMU观测数据和相机(观测矢量),预测到移动装置移动模型(系统模型),通过惯性测量和coplananty条件和逆深度模型(观测模型)过滤到跟踪方法。被跟踪移动设备的位置由系统模型(预测步骤),其被假定为线性移动模型来估计。基于似然性(过滤步骤),然后估计位置被优化参照新的观测数据。在滤波步骤对应的优化来估计最大后验概率的。颗粒过滤器被用于通过预测和过滤步骤的计算。所提出的方法应用于通过在室内环境中的移动设备所获取的数据。通过实验,该方法的高性能确认。

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