Alex Yu: h-index, Total Citations, and Citation Map
Alex Yu's h-index is 4 (4 i10-index, 6,616+ total citations across 4+ publications) according to Google Scholar as of May 2026. Alex Yu is affiliated with Unknown affiliation.
Alex Yu is a researcher affiliated with Unknown affiliation, specializing in Computer Vision, Machine Learning, Computer Graphics. Their work has been cited 6,616 times. This profile visualizes their global influence, highlighting strong citation networks in United States.
Alex Yu's Citation Metrics
Bibliometric impact based on 4 indexed publications.
- H-Index
- 4
- i10-Index
- 4
- Total Citations
- 6,616
- Citing Countries
- 8
As of May 2026.
Alex Yu has an h-index of 4 and 6,616 total citations across 4 publications, with research cited by institutions in 8 countries.
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Global Impact Map
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Top Cited Works
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Plenoxels: Radiance fields without neural networks
20222,541
Top Citing Countries
Top Citing Institutions
Visa Evidence Package
Views and exports tuned for EB-1A, O-1A, and EB-2 NIW petitions. Sustained acclaim, geographic reach, and independent-citation filtering are the strongest evidence categories immigration adjudicators look for.
Significant Contributions
Auto-detected research lines — a seminal paper and the follow-up work building on it. Review and edit before using in a petition. Each Free PDF opens in a new tab — EB-1A organises this into the structure USCIS applies to Criterion 5 of 8 CFR § 204.5(h)(3)(v); EB-1B re-frames it under § 204.5(i)(3) (outstanding researcher); NIW presents it under prong 2 of Matter of Dhanasar.
The researcher developed pixelNeRF, a method for generating neural radiance fields from one or few images, establishing a foundational approach for efficient 3D scene reconstruction.
The researcher established standardized public data formats and archiving protocols for the Breakthrough Listen search, facilitating open access and reproducibility in the field of astrobiology.
The researcher developed Plenoxels, a novel volumetric representation for radiance fields that eliminates the need for neural networks, achieving high citation impact.
Citation trend (last 10 years)Click to expand
Citation Trend (Last 10 Years)
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