The recent popularity of structured-light depth sensors has enabled many new applications from gesture-based user interface to 3D reconstructions. The quality of the depth measurements of these systems, however, is far from perfect. Some depth values can have significant errors, while others can be missing altogether. The uncertainty in depth measurements among these sensors can significantly degrade the performance of any subsequent vision processing. In this paper, we propose a novel probabilistic model to capture various types of uncertainties in the depth measurement process among structured-light systems. The key to our model is the use of depth layers to account for the differences between foreground objects and background scene, the ...
Thesis (Ph.D.)--University of Washington, 2018With the introduction of economical depth cameras, com...
In the last decade, various companies have released different versions of RGB-D sensors, improving t...
Depth measurement is a challenging problem in computer vision research. In this study, we first desi...
The recent popularity of structured-light depth sensors has enabled many new applications from gestu...
© 2016 IEEE. Color-guided depth completion is to refine depth map through structure light sensing by...
Recent studies in the light field imaging have shown the potential and advantages of different light...
Commercial RGB-D sensors such as Kinect and Structure Sensors have been widely used in the game indu...
Abstract: We present a novel approach for depth sensing that combines structured light scanning and ...
Abstract — This paper proposes an adaptive color-guided autoregressive (AR) model for high quality d...
An important recent development in the visual information acquisition field is the emergence of low ...
In recent years, depth cameras (such as Microsoft Kinect and ToF cameras) have gained much popularit...
Depth image acquisition with structured light approaches in outdoor environments is a challenging pr...
This work presents a procedure for refining depth maps acquired using RGB-D (depth) cameras. With n...
Figure 1: Given an (a) input image and (b) its corresponding depth or equivalent (it could come from...
This work proposes a robust visual odometry method for structured environments that combines point f...
Thesis (Ph.D.)--University of Washington, 2018With the introduction of economical depth cameras, com...
In the last decade, various companies have released different versions of RGB-D sensors, improving t...
Depth measurement is a challenging problem in computer vision research. In this study, we first desi...
The recent popularity of structured-light depth sensors has enabled many new applications from gestu...
© 2016 IEEE. Color-guided depth completion is to refine depth map through structure light sensing by...
Recent studies in the light field imaging have shown the potential and advantages of different light...
Commercial RGB-D sensors such as Kinect and Structure Sensors have been widely used in the game indu...
Abstract: We present a novel approach for depth sensing that combines structured light scanning and ...
Abstract — This paper proposes an adaptive color-guided autoregressive (AR) model for high quality d...
An important recent development in the visual information acquisition field is the emergence of low ...
In recent years, depth cameras (such as Microsoft Kinect and ToF cameras) have gained much popularit...
Depth image acquisition with structured light approaches in outdoor environments is a challenging pr...
This work presents a procedure for refining depth maps acquired using RGB-D (depth) cameras. With n...
Figure 1: Given an (a) input image and (b) its corresponding depth or equivalent (it could come from...
This work proposes a robust visual odometry method for structured environments that combines point f...
Thesis (Ph.D.)--University of Washington, 2018With the introduction of economical depth cameras, com...
In the last decade, various companies have released different versions of RGB-D sensors, improving t...
Depth measurement is a challenging problem in computer vision research. In this study, we first desi...