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AIDM: artificial intelligent for digital museum autonomous system with mixed reality and software-driven data collection and analysis

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Abstract

The construction of digital museum is the inevitable trend of the development of museum cause. At present, there are some problems in the construction of digital museum in China, such as backward concept, low overall level, lack of funds and talents. Digital museum is a museum that uses digital and network technology to present the functions of physical museum on the network in a digital way. It includes three parts: the on-site digital display system of the museum exhibition hall, the museum business management system based on network digital technology and the network platform display system. This paper designs and implements a new intelligent digital museum system based on the hybrid reality technology. Compared with the existing digital museum navigation mode, the system gets rid of the tedious way of navigation, provides tourists with more diverse and realistic cultural relics information, and makes the human–computer interaction more humanized. The museum construction in the future will continue to be digital, networked and intelligent, which provides a good practice platform and a broad development world for the improvement and application of new technologies. Besides, the software-driven data collection and analysis models are combined for the systematic performance improvement of the model. The comparison experiment has shown that the proposed model is efficient.

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Jiang, T., Gan, X., Liang, Z. et al. AIDM: artificial intelligent for digital museum autonomous system with mixed reality and software-driven data collection and analysis. Autom Softw Eng 29, 22 (2022). https://doi.org/10.1007/s10515-021-00315-9

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