In this paper we propose a framework for the fusion of depth data produced by a Time-of-Flight (ToF) camera and stereo vision system. Initially, depth data acquired by the ToF camera are upsampled by an ad-hoc algorithm based on image segmentation and bilateral filtering. In parallel a dense disparity map is obtained using the Semi-Global Matching stereo algorithm. Reliable confidence measures are extracted for both the ToF and stereo depth data. In particular, ToF confidence also accounts for the mixed-pixel effect and the stereo confidence accounts for the relationship between the pointwise matching costs and the cost obtained by the semi-global optimization. Finally, the two depth maps are synergically fused by enforcing the local consis...
The fusion of depth acquired actively with the depth estimated passively proved its significance as ...
Current 3D video applications require the availability of depth information, that can be acquired re...
The fusion of depth acquired actively with the depth estimated passively proved its significance as ...
In this paper we propose a framework for the fusion of depth data produced by a Time-of-Flight (ToF)...
In this paper we propose a framework for the fusion of depth data produced by a Time-of-Flight (ToF)...
This paper proposes a novel framework for the fusion of depth data produced by a Time-of-Flight (ToF...
none5noTime-of-Flight (ToF) sensors and stereo vision systems are two widely used technologies for d...
Depth estimation for dynamic scenes is a challenging and relevant problem in computer vision. Althou...
Depth estimation for dynamic scenes is a challenging and relevant problem in computer vision. Althou...
Depth estimation for dynamic scenes is a challenging and relevant problem in computer vision. Althou...
Due to the demand for depth maps of higher quality than possible with a single depth imaging techniq...
Time-of-Flight (ToF) sensors and stereo vision systems are two widely used technologies for depth es...
Time-of-Flight (ToF) sensors and stereo vision systems are two widely used technologies for depth es...
Time-of-Flight (ToF) sensors and stereo vision systems are both capable of acquiring depth informati...
none4noDepth estimation for dynamic scenes is a challenging and relevant problem in computer vision....
The fusion of depth acquired actively with the depth estimated passively proved its significance as ...
Current 3D video applications require the availability of depth information, that can be acquired re...
The fusion of depth acquired actively with the depth estimated passively proved its significance as ...
In this paper we propose a framework for the fusion of depth data produced by a Time-of-Flight (ToF)...
In this paper we propose a framework for the fusion of depth data produced by a Time-of-Flight (ToF)...
This paper proposes a novel framework for the fusion of depth data produced by a Time-of-Flight (ToF...
none5noTime-of-Flight (ToF) sensors and stereo vision systems are two widely used technologies for d...
Depth estimation for dynamic scenes is a challenging and relevant problem in computer vision. Althou...
Depth estimation for dynamic scenes is a challenging and relevant problem in computer vision. Althou...
Depth estimation for dynamic scenes is a challenging and relevant problem in computer vision. Althou...
Due to the demand for depth maps of higher quality than possible with a single depth imaging techniq...
Time-of-Flight (ToF) sensors and stereo vision systems are two widely used technologies for depth es...
Time-of-Flight (ToF) sensors and stereo vision systems are two widely used technologies for depth es...
Time-of-Flight (ToF) sensors and stereo vision systems are both capable of acquiring depth informati...
none4noDepth estimation for dynamic scenes is a challenging and relevant problem in computer vision....
The fusion of depth acquired actively with the depth estimated passively proved its significance as ...
Current 3D video applications require the availability of depth information, that can be acquired re...
The fusion of depth acquired actively with the depth estimated passively proved its significance as ...