442 research outputs found
A comparative study of breast surface reconstruction for aesthetic outcome assessment
Breast cancer is the most prevalent cancer type in women, and while its
survival rate is generally high the aesthetic outcome is an increasingly
important factor when evaluating different treatment alternatives. 3D scanning
and reconstruction techniques offer a flexible tool for building detailed and
accurate 3D breast models that can be used both pre-operatively for surgical
planning and post-operatively for aesthetic evaluation. This paper aims at
comparing the accuracy of low-cost 3D scanning technologies with the
significantly more expensive state-of-the-art 3D commercial scanners in the
context of breast 3D reconstruction. We present results from 28 synthetic and
clinical RGBD sequences, including 12 unique patients and an anthropomorphic
phantom demonstrating the applicability of low-cost RGBD sensors to real
clinical cases. Body deformation and homogeneous skin texture pose challenges
to the studied reconstruction systems. Although these should be addressed
appropriately if higher model quality is warranted, we observe that low-cost
sensors are able to obtain valuable reconstructions comparable to the
state-of-the-art within an error margin of 3 mm.Comment: This paper has been accepted to MICCAI201
Benchmarking and Comparing Popular Visual SLAM Algorithms
This paper contains the performance analysis and benchmarking of two popular
visual SLAM Algorithms: RGBD-SLAM and RTABMap. The dataset used for the
analysis is the TUM RGBD Dataset from the Computer Vision Group at TUM. The
dataset selected has a large set of image sequences from a Microsoft Kinect
RGB-D sensor with highly accurate and time-synchronized ground truth poses from
a motion capture system. The test sequences selected depict a variety of
problems and camera motions faced by Simultaneous Localization and Mapping
(SLAM) algorithms for the purpose of testing the robustness of the algorithms
in different situations. The evaluation metrics used for the comparison are
Absolute Trajectory Error (ATE) and Relative Pose Error (RPE). The analysis
involves comparing the Root Mean Square Error (RMSE) of the two metrics and the
processing time for each algorithm. This paper serves as an important aid in
the selection of SLAM algorithm for different scenes and camera motions. The
analysis helps to realize the limitations of both SLAM methods. This paper also
points out some underlying flaws in the used evaluation metrics.Comment: 7 pages, 4 figure
Probabilistic Combination of Noisy Points and Planes for RGB-D Odometry
This work proposes a visual odometry method that combines points and plane
primitives, extracted from a noisy depth camera. Depth measurement uncertainty
is modelled and propagated through the extraction of geometric primitives to
the frame-to-frame motion estimation, where pose is optimized by weighting the
residuals of 3D point and planes matches, according to their uncertainties.
Results on an RGB-D dataset show that the combination of points and planes,
through the proposed method, is able to perform well in poorly textured
environments, where point-based odometry is bound to fail.Comment: Accepted to TAROS 201
Sparse 3D Point-cloud Map Upsampling and Noise Removal as a vSLAM Post-processing Step: Experimental Evaluation
The monocular vision-based simultaneous localization and mapping (vSLAM) is
one of the most challenging problem in mobile robotics and computer vision. In
this work we study the post-processing techniques applied to sparse 3D
point-cloud maps, obtained by feature-based vSLAM algorithms. Map
post-processing is split into 2 major steps: 1) noise and outlier removal and
2) upsampling. We evaluate different combinations of known algorithms for
outlier removing and upsampling on datasets of real indoor and outdoor
environments and identify the most promising combination. We further use it to
convert a point-cloud map, obtained by the real UAV performing indoor flight to
3D voxel grid (octo-map) potentially suitable for path planning.Comment: 10 pages, 4 figures, camera-ready version of paper for "The 3rd
International Conference on Interactive Collaborative Robotics (ICR 2018)
SLAM-based 3D outdoor reconstructions from lidar data
The use of depth (RGBD) cameras to reconstruct large outdoor environments is not feasible due to lighting conditions
and low depth range. LIDAR sensors can be used instead.
Most state of the art SLAM methods are devoted to indoor environments and depth (RGBD) cameras. We have adapted two SLAM systems to work with LIDAR data. We have compared the systems for LIDAR and RGBD data by performing quantitative evaluations. Results show that the best method for LIDAR data is RTAB-Map with a clear difference. Additionally, RTAB-Map has been used to create 3D reconstructions with and without photometry from a visible color camera. This proves the potential of LIDAR sensors for the reconstruction of outdoor environments for immersion or audiovisual production applicationsPeer ReviewedPostprint (author's final draft
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