Dense Reconstruction Using 3D Object Shape Priors

Author(s):  
Amaury Dame ◽  
Victor A. Prisacariu ◽  
Carl Y. Ren ◽  
Ian Reid
Author(s):  
Kevin Karsch ◽  
Zicheng Liao ◽  
Jason Rock ◽  
Jonathan T. Barron ◽  
Derek Hoiem

2013 ◽  
pp. 473-497
Author(s):  
Pavel Zemcik ◽  
Michal Spanel ◽  
Premysl Krsek ◽  
Miloslav Richter

This chapter contains an overview of methods for a 3D object shape from both the surface and the internal structure of the objects. The acquisition methods of interest are optical methods based on objects surface image processing and CT/NMR sensors that explore the object volume structure. The chapter also describes some methods for 3D shape processing. The focus is on 3D surface shape acquisition methods based on multiple views, methods using single view video sequences, and methods that use a single view with a controlled light source. In addition, the volume methods represented by CT/NMR are covered as well. A set of algorithms suitable for the acquired 3D data processing and simplification are shown to demonstrate how the models data can be processed. Finally, the chapter discusses future directions and then draws conclusions.


Author(s):  
Alexey Ruchay ◽  
Anastasia Kober ◽  
Vsevolod Kalschikov ◽  
Konstantin Dorofeev ◽  
Vladimir Kolpakov

2021 ◽  
Vol 40 (1) ◽  
pp. 53-63
Author(s):  
Xin Sun ◽  
Dong Li ◽  
Wei Wang ◽  
Hongxun Yao ◽  
Dongliang Xu ◽  
...  

 We present a novel graph cut method for iterated segmentation of objects with specific shape bias (SBGC). In contrast with conventional graph cut models which emphasize the regional appearance only, the proposed SBGC takes the shape preference of the interested object into account to drive the segmentation. Therefore, the SBGC can ensure a more accurate convergence to the interested object even in complicated conditions where the appearance cues are inadequate for object/background discrimination. In particular, we firstly evaluate the segmentation by simultaneously considering its global shape and local edge consistencies with the object shape priors. Then these two cues are formulated into a graph cut framework to seek the optimal segmentation that maximizing both of the global and local measurements. By iteratively implementing the optimization, the proposed SBGC can achieve joint estimation of the optimal segmentation and the most likely object shape encoded by the shape priors, and eventually converge to the candidate result with maximum consistency between these two estimations. Finally, we take the ellipse shape objects with various segmentation challenges as examples for evaluation. Competitive results compared with state-of-the-art methods validate the effectiveness of the technique.


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