Litcius/Paper detail

Anthropometric clothing measurements from 3D body scans

Song Yan, Johan Wirta, Joni‐Kristian Kämäräinen

2020Machine Vision and Applications53 citationsDOIOpen Access PDF

Abstract

Abstract We propose a full processing pipeline to acquire anthropometric measurements from 3D measurements. The first stage of our pipeline is a commercial point cloud scanner. In the second stage, a pre-defined body model is fitted to the captured point cloud. We have generated one male and one female model from the SMPL library. The fitting process is based on non-rigid iterative closest point algorithm that minimizes overall energy of point distance and local stiffness energy terms. In the third stage, we measure multiple circumference paths on the fitted model surface and use a nonlinear regressor to provide the final estimates of anthropometric measurements. We scanned 194 male and 181 female subjects, and the proposed pipeline provides mean absolute errors from 2.5 to 16.0 mm depending on the anthropometric measurement.

Topics & Concepts

Point cloudIterative closest pointAnthropometryPipeline (software)ScannerComputer scienceCircumferencePoint (geometry)MathematicsArtificial intelligenceAlgorithmComputer visionGeometryMedicineProgramming languageInternal medicine3D Shape Modeling and AnalysisOptical measurement and interference techniquesHuman Pose and Action Recognition