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11 сакавіка 2026, 10:21
Chinese scientists enable more realistic digital humans by building high-precision 3D facial database
Photo: Sri Lanka Gardien
SHENZHEN, 11 March (BelTA - Xinhua) - Chinese scientists have developed a
high-precision three-dimensional (3D) face database and achieved a
breakthrough in personalized modeling, which will strongly support more
natural human-computer interaction.
To enable virtual humans to
express vivid emotions, recognize human identities and demonstrate
embodied intelligence, the key technology is 3D facial keypoint
detection.
However, the lack of large-scale and precisely
annotated 3D facial datasets means that most current 3D facial landmark
detection algorithms rely on 2D texture assistance or non-photorealistic
digital 3D faces. Such 3D facial keypoint detection has long been
hindered by insufficient data and poor generalization ability.
A
research team from the Shenzhen Institutes of Advanced Technology of the
Chinese Academy of Sciences and Fujian University of Technology has
developed a new curvature-fused graph attention network (CF-GAT) capable
of predicting facial landmarks directly from raw point clouds, which
helps achieve an essential improvement from "one-size-fits-all" to
personalized modeling.
This study was published last week in the journal IEEE Transactions on Circuits and Systems for Video Technology.
The
research team built a custom 3D/4D facial acquisition system and
conducted standardized data collection, creating what it said is the
industry's largest high-precision, accurately annotated 3D facial
database to date, comprising approximately 200,000 high-fidelity 3D
facial scans.
On this basis, the database system also includes a
multi-expression 3D face dataset, a standardized 3D facial landmark
dataset, a high-precision 3D human body dataset, and a dynamic 4D facial
expression dataset.
"These databases have become core support in
the key technology chain of humanoid robots, providing basic data for
high-fidelity perception, expression modeling and behavior generation,"
the corresponding author Song Zhan said.
"In the future, these
datasets will further serve the data-driven large-model humanoid robot
system to build more natural and intelligent human-robot interaction
capabilities," he added.