A comprehensive study and analysis of artificial intelligence-based waiter robot in restaurant
Date
2024-01Publisher
Brac UniversityAuthor
Nafis, Allama BakhtiyarAhammed, Kawsar
Oishi, Humaira Rahman
Afroj, Sumya
Raka, Rezwana Chaudhury
Metadata
Show full item recordAbstract
"The rapid development of technology has led to the implementation of numerous
solutions aimed at streamlining processes, one of which is the incorporation of artifi
cial intelligence. The Simultaneous Localization and Mapping (SLAM) algorithm is
fundamental to the restaurant robots operation and thereby determines its success
or failure in carrying out its tasks. Few studies have looked at how well SLAM algo
rithm work when combined with path planning for indoor location, even though the
present two-dimensional Lidar-based SLAM algorithm has done quite well, especially
in indoor scenarios. Planning and mapping routes for restaurant robots operating
in an indoor setting is the topic of the following essay. The goal of this research is
to find out how indoor location systems may make use of path planning algorithms
in conjunction with SLAM methods. To verify the mapping data, real-time path
planning must be investigated. For global path planning, the A* algorithm is used
to find the most efficient route while avoiding obstacles. Local path planning makes
use of the Dynamic window approach (DWA) algorithm. After extensive testing in
simulated, emulated, and competitive indoor situations, it was determined that both
the SLAM and path planning algorithms performed admirably. Further, we employ
a speech recognition component to facilitate communication with clients and an ob
ject identification model to track down lost items. Finally, experts may find this
papers results useful when deciding which algorithms to use when building SLAM
systems that meet their specific needs."