Title :
Bingham procrustean alignment for object detection in clutter
Author :
Glover, Jack ; Popovic, S.
Abstract :
A new system for object detection in cluttered RGB-D images is presented. Our main contribution is a new method called Bingham Procrustean Alignment (BPA) to align models with the scene. BPA uses point correspondences between oriented features to derive a probability distribution over possible model poses. The orientation component of this distribution, conditioned on the position, is shown to be a Bingham distribution. This result also applies to the classic problem of least-squares alignment of point sets, when point features are orientation-less, and gives a principled, probabilistic way to measure pose uncertainty in the rigid alignment problem. Our detection system leverages BPA to achieve more reliable object detections in clutter.
Keywords :
image colour analysis; object detection; pose estimation; statistical distributions; Bingham distribution; Bingham procrustean alignment; cluttered RGB-D images; least-squares alignment; object detection; pose uncertainty measurement; probability distribution; red-green-blue-depth images; rigid alignment problem; Computational modeling; Image edge detection; Noise; Object detection; Position measurement; Predictive models; Quaternions;
Conference_Titel :
Intelligent Robots and Systems (IROS), 2013 IEEE/RSJ International Conference on
Conference_Location :
Tokyo
DOI :
10.1109/IROS.2013.6696658