Abstract:
Depth sensors such as the Microsoft Kinect™ depth sensor provide three dimensional point clouds of an observed scene. In this paper, we employ Random Hypersurface Models ...Show MoreMetadata
Abstract:
Depth sensors such as the Microsoft Kinect™ depth sensor provide three dimensional point clouds of an observed scene. In this paper, we employ Random Hypersurface Models (RHMs), which is a modeling technique for extended object tracking, to point cloud fusion in order to track a shape approximation of an underlying object. We present a novel variant of RHMs to model shapes in 3D space. Based on this novel model, we develop a specialized algorithm to track persons by approximating their shapes as cylinders. For evaluation, we utilize a Kinect network and simulations based on a stochastic sensor model.
Published in: 2012 15th International Conference on Information Fusion
Date of Conference: 09-12 July 2012
Date Added to IEEE Xplore: 30 August 2012
ISBN Information:
Conference Location: Singapore
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Point Cloud ,
- Hypersurface ,
- Noisy Points ,
- Noisy Point Clouds ,
- 3D Space ,
- Depth Camera ,
- Sensor Model ,
- Field Of View ,
- Time Step ,
- Parameter Vector ,
- Bayesian Estimation ,
- Random Vector ,
- Shape Functions ,
- Sensor Networks ,
- Target Tracking ,
- Prediction Step ,
- Random Sample Consensus ,
- Measurement Equation ,
- Iterative Closest Point ,
- Measurement Update ,
- Kinect Sensor ,
- Circle Shape ,
- Future Time Steps
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Point Cloud ,
- Hypersurface ,
- Noisy Points ,
- Noisy Point Clouds ,
- 3D Space ,
- Depth Camera ,
- Sensor Model ,
- Field Of View ,
- Time Step ,
- Parameter Vector ,
- Bayesian Estimation ,
- Random Vector ,
- Shape Functions ,
- Sensor Networks ,
- Target Tracking ,
- Prediction Step ,
- Random Sample Consensus ,
- Measurement Equation ,
- Iterative Closest Point ,
- Measurement Update ,
- Kinect Sensor ,
- Circle Shape ,
- Future Time Steps