AnnotateXR: An Extended Reality Workflow for Automating Data Annotation to Support Computer Vision Applications

Author:

Chidambaram Subramanian1,Jain Rahul2,Swarup Reddy Sai1,Unmesh Asim32,Ramani Karthik1

Affiliation:

1. Purdue University School of Mechanical Engineering, , West Lafayette, IN 47907

2. Purdue University School of Electrical and Computer Engineering, , West Lafayette, IN 47907

3. Purdue University West Lafayette School of Electrical and Computer Engineering, , West Lafayette, IN 47907

Abstract

Abstract Computer vision (CV) algorithms require large annotated datasets that are often labor-intensive and expensive to create. We propose AnnotateXR, an extended reality (XR) workflow to collect various high-fidelity data and auto-annotate it in a single demonstration. AnnotateXR allows users to align virtual models over physical objects, tracked with six degrees-of-freedom (6DOF) sensors. AnnotateXR utilizes a hand tracking capable XR head-mounted display coupled with 6DOF information and collision detection to enable algorithmic segmentation of different actions in videos through its digital twin. The virtual–physical mapping provides a tight bounding volume to generate semantic segmentation masks for the captured image data. Alongside supporting object and action segmentation, we also support other dimensions of annotation required by modern CV, such as human–object, object–object, and rich 3D recordings, all with a single demonstration. Our user study shows AnnotateXR produced over 112,000 annotated data points in 67 min.

Publisher

ASME International

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