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Starter Set Super-MP-3D by Marvelmind

Starter Set Super-MP-3D by Marvelmind

Regular price 19.293.000 VND
Regular price Sale price 19.293.000 VND
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The Starter Set Super-MP-3D is designed for precise (±2cm) indoor positioning and navigation. The set is perfect for production automation, warehouse automation, safety, and productivity; for people and vehicle tracking, building geo-fencing zones, and tracking inside of them.

It can be used for autonomous indoor navigation of mobile robots, vehicles, and drones; for industrial applications, for example, forklifts or people tracking in a warehouse for safety and productivity.

The starter set is a multi-purpose (MP) set based on Super-Beacons. A particular focus of the set is on the accuracy of positioning. The set can provide a typical accuracy of ±2cm even before additional sensor fusion or filtering.

This level of accuracy is about ten times higher than what ultra-wideband (UWB) provides and about 100 times higher than it can be provided by BLE (iBeacon) based systems.

All base software is already included in the set’s price. You can simply download it.

Starter Set Super-MP is the most versatile (see supported architectures below) and the easiest to set up and deploy (no need for manual distances measurement or calibration) set available today (Mar.2023).

By default, the Starter Set Super-MP-3D supports NIA and IA (https://marvelmind.com/pics/architectures_comparison.pdf):

  • 1D – up to 4 mobile beacons
  • 2D – up to 4 submaps, including fully overlapping submaps and 2N beacon redundancy for optimal tracking
  • 3D – up to 1 submap with N+1 beacon redundancy

With additional licenses, Starter Set Super-MP-3D can support:

  • Multi-Frequency (MF) NIA in 3D with N+1 beacon redundancy
  • Multi-Frequency (MF) NIA in 2D with N+1 beacon redundancy
  • MMSW0004: MF NIA support

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