Technical Trends and Competitive Situation in Respect of Metahuman—From Product Modules and Technical Topics to Patent Data
Abstract
:1. Introduction
- How do we identify metahuman product modules and relevant technology patents?
- Which countries are more actively adopting metahuman technology and developing more advanced technology?
- How is metahuman technology evolving over time?
2. Literature Review
2.1. Metahuman
2.2. Division Rules of Product Modularity
2.3. Technical Topic Identification of Patents
3. Materials and Methods
3.1. Research Framework
3.2. Source and Filtering for Data
3.3. Metahuman Product Modularity
3.4. Technical Topic Analysis of Patent Text
3.5. Matching Product Modularity, Technical Topics, and Patent Data
4. Results
4.1. Technology Trends
4.2. Geographical Layout
4.3. Technological Revolution
5. Conclusions
5.1. Discussion
5.2. Theoretical and Practical Implications
5.3. Limitations and Future Research Directions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Modular Rules | Theory | Methods | References |
---|---|---|---|
Function features | Functional flow of product | Formal functional decomposition and heuristic methods | Stone et al. (2000) [29] |
Function features | Functional flow of product | Quality function deployment (QFD) and mapping matrix | Li et al. (2012) [30] |
Function features | Functional flow of product | Axiomatic design; relevance matrix; clustering | Gu et al. (2014) [31] |
Function and structure features | Functional flow of product | Fuzzy consistent comparison matrix | Xiao et al. (2015) [32] |
Function and structure features | Lifecycle perspective | Correlation matrix of product components | Gu et al. (1999) [33] |
Function and structure features and developing a strategy | Developing strategy for modularity | Adding strategies into integrated product module creation | Asan et al. (2004) [34] |
Function-behavior-structure relevance | System theory | Design structure matrix (DSM) | Nie (2013) [35] |
Methodology | References | Advantages | Disadvantages | |
---|---|---|---|---|
Citation network clustering | Direct citation | Zhang et al. (2016) [37] | Reveal relationships between individual patents | Diversification of citation motivation, literature with citation relationship may not have thematic similarity, lagging in publication |
Co-citation | Breitzman (2015) [38] | |||
Coupling | Li and Chen (2015) [39] | |||
Text mining | Word frequency analysis | Zhang et al. (2018) [40] | Easy to operate, fine-grained, and objective analysis | Difficult to reflect inter-word associations, weak semantic relationships |
Co-word analysis | Choi et al. (2011) [41] | Objectively reveal the connections between technical topics | Difficult to deal with synonyms and polysemous words, lack of semantic information mining | |
Topic model analysis | Li et al. (2022) [42] | Handles synonyms and polysemy issues well, identifies hidden topics well | Insufficient indication of important low-frequency words |
Keyword | Query Reformulation |
---|---|
Metahuman | TS = ‘Metahuman’ OR ‘Digital Human’ OR ‘Virtual Human’ OR ‘Avatar’ |
Digital Human | |
Virtual Human | |
Avatar | |
AI Anchor | TS = ‘AI Anchor’ OR ‘Virtual Anchor’ OR ‘AI digital human’ OR ‘Virtual Idol’ OR ‘Virtual KOL’ OR ‘Virtual Actor’ OR ‘Virtual Host’ OR ‘Virtual Spokesperson’ OR ‘Virtual Brand Officer’ OR ‘Virtual Customer Service’ OR ‘Virtual Tour Guide’ OR ‘Virtual Narrator’ |
Virtual Anchor | |
AI Digital Human | |
Virtual Idol | |
Virtual KOL | |
Virtual Actor | |
Virtual Host | |
Virtual Spokesperson | |
Virtual Influencer | |
Virtual Brand Officer | |
Virtual Customer Service | |
Virtual Tour Guide | |
Virtual Narrator |
No. | Topics | Feature Words |
---|---|---|
1 | Audio-visual information processing and formation process | image, display, face, three-dimensional, screen, scene, VR |
2 | Signal connection and data analysis | license, trace, VRRP, bucket, foreground |
3 | Software support system | interrupt, PCIe, raid, waveguide, checksum |
4 | Hardware carrier equipment | memory, computing, application, information, environment |
5 | Network data information transmission and response | VPLS, transponder, infiniband, payload, IPv4, IPv6 |
6 | Human–computer interaction application | avatar, game, shopping, financial, chatting, advertisement |
7 | Synthetic main material and design method | composition, compound, persona, profiling, campus |
Patent Publication Number | Patent-Topic Probability Distribution | Derwent Patent Title |
---|---|---|
US874675P | 0.998176932 | System for resecting target tissue mass from host tissue mass, where host tissue mass is deformable; involves surgical instrument; first fiducial sensor dimensioned to fit inside and next to target tissue mass; first fiducial sensor including hook to anchor first fiducial sensor inside |
LT000066 | 0.997958779 | Observation of spatial image stream by projecting stereo images at pre-determined angle using light beams and focusing onto light reflecting material e.g., reflection hologram, which creates spatial separate hologram surface viewing zones |
CN10972624 | 0.997626662 | Method of virtual reality human-computer interaction, involves determining moving speed of virtual cursor and set according to relative distance and first preset relationship, and orrespondingly setting first preset relationship and content of virtual object |
CN11343006 | 0.997327328 | Projection display device has light modulating panel which is pixel-level high-speed spatial light modulator set on side of light reflecting plate away from micro galvanometer array for modulating beam energy output by galvanometer array |
CN11580108 | 0.997310519 | Vehicle-mounted augmented reality enhancing head-up display system has camera, image controller, and augmented reality enhancing head-up display device comprising main reflector, secondary reflector, and image generator |
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Gong, X.; Ren, J.; Wang, X.; Zeng, L. Technical Trends and Competitive Situation in Respect of Metahuman—From Product Modules and Technical Topics to Patent Data. Sustainability 2023, 15, 101. https://doi.org/10.3390/su15010101
Gong X, Ren J, Wang X, Zeng L. Technical Trends and Competitive Situation in Respect of Metahuman—From Product Modules and Technical Topics to Patent Data. Sustainability. 2023; 15(1):101. https://doi.org/10.3390/su15010101
Chicago/Turabian StyleGong, Xuandi, Jinluan Ren, Xinyan Wang, and Li Zeng. 2023. "Technical Trends and Competitive Situation in Respect of Metahuman—From Product Modules and Technical Topics to Patent Data" Sustainability 15, no. 1: 101. https://doi.org/10.3390/su15010101
APA StyleGong, X., Ren, J., Wang, X., & Zeng, L. (2023). Technical Trends and Competitive Situation in Respect of Metahuman—From Product Modules and Technical Topics to Patent Data. Sustainability, 15(1), 101. https://doi.org/10.3390/su15010101