This study aims to design a technological and software architecture capable of providing an online indoor mapping system. The architecture is designed for a drone with Raspberry Pi and two LiDAR devices, one to guarantee better and more accurate classification and detection and the other to create a visualization of the visited area. To achieve this, specific frameworks and communication protocols such as AMQP were selected.
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