This SpringerBrief presents novel methods of approaching challenging
problems in the reconstruction of accurate 3D models and serves as an
introduction for further 3D reconstruction methods. It develops a 3D
reconstruction system that produces accurate results by cascading
multiple novel loop detection, sifting, and optimization methods.
The authors offer a fast point cloud registration method that utilizes
optimized randomness in random sample consensus for surface loop
detection. The text also proposes two methods for surface-loop sifting.
One is supported by a sparse-feature-based optimization graph. This
graph is more robust to different scan patterns than earlier methods and
can cope with tracking failure and recovery. The other is an offline
algorithm that can sift loop detections based on their impact on loop
optimization results and which is enabled by a dense map posterior
metric for 3D reconstruction and mapping performance evaluation works
without any costly ground-truth data.
The methods presented in Towards Optimal Point Cloud Processing for 3D
Reconstruction will be of assistance to researchers developing 3D
modelling methods and to workers in the wide variety of fields that
exploit such technology including metrology, geological animation and
mass customization in smart manufacturing.