Abstract

This paper presents an algorithm for surfel color and position enhancement from RGB-D data acquired across multiple image frames. Surfel-based reconstruction algorithms associate each RGB-D frame pixel to a surfel in the model. As the reconstruction progresses, surfel color and position are the average of all observations. Our proposed algorithm is designed to enhance position discontinuities and to produce sharper colors, to facilitate subsequent segmentation steps on the 3D model. During reconstruction, several colors and positions are tracked for each surfel. Only at the end of reconstruction phase the most frequent value is chosen through a Winner Takes All policy. The result has been compared to the standard averaging policy of reconstruction algorithms. Experiments have been performed using both Flood Fill and Supervoxel-LCCP segmentation and by applying two segmentation evaluation metrics. Results show that the proposed method is suitable to enhance a surfel-based model for object segmentation purposes.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call