研究目的
To propose a method for capturing accurate human body shape and anthropometrics from a single consumer grade depth sensor, enabling applications like virtual try-on or fit personalization in fashion e-commerce.
研究成果
The proposed system efficiently estimates human body measurements and generates 3D models in real-time, with competitive accuracy. It leverages synthetic data to overcome the limitations of real-world datasets, offering a practical solution for home-oriented body scanning applications.
研究不足
The system requires the user to be directly facing the depth camera, limiting the view to frontal scans. The accuracy of joint locations may be affected by noise or occlusions in the depth data.
1:Experimental Design and Method Selection
The methodology involves generating a synthetic dataset of 3D human body models, estimating body measurements from depth images, and combining these with local geometry features for model retrieval.
2:Sample Selection and Data Sources
A dataset of 83 clothed people with ground truth height and weight was collected. Synthetic models were generated using real-world body size distributions.
3:List of Experimental Equipment and Materials
Microsoft KinectTM device for depth data acquisition, OpenNI for joint location information, and MakeHuman for synthetic model generation.
4:Experimental Procedures and Operational Workflow
Depth maps and joint locations are acquired, features are extracted, and a nearest-neighbor search is conducted in the synthetic dataset to retrieve the closest 3D model.
5:Data Analysis Methods
Feature vectors are compared using L2 distance for nearest-neighbor search. ICP registration is used for alignment verification.
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