Andrei M. Shkel

Pedestrian Inertial Navigation with Self-Contained Aiding


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from the specific force to obtain the acceleration vector, and revolve the acceleration vector from the system frame to the inertial frame before performing integration. Given the accelerations of the system, the change of position can be calculated by performing two consecutive integrations of the acceleration with respect to time.

Schematic illustration of gimbal system.

      Source: Woodman [5]

      .

Schematic illustration of the comparison of (a) gimbal inertial navigation algorithm and (b) strapdown inertial navigation algorithm.

      Pedestrian navigation has been of great interest in recent years for path finding, personal security, health monitoring, and localizers for first responder systems. Due to the complicated environment in which a person may need to navigate, self‐contained navigation techniques are fundamental for pedestrian navigation. An example of the self‐contained navigation technique is inertial‐only navigation of pedestrians, which became recently a popular topic. Most pedestrian navigation systems rely on inertial sensors and inertial navigation techniques in their core, just as any other navigation applications. However, the pedestrian navigation poses much stricter requirements on the size and weight of inertial instruments, or IMUs, due to the limitation of human carrying capacity, and the inertial‐only pedestrian application was technologically not feasible until recently.

Photos depict a comparison of (a) an IMU developed for the Apollo missions in 1960s. (b) a current commercial MEMS-based IMU.

      Source: https://en.wikipedia.org/wiki/Inertial_measurement_unit

      and (b) a current commercial MEMS‐based IMU.

      Source: https://www.bosch-sensortec.com/products/smart-sensors/bhi160b/