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This paper presents the Brown Pedestrian Odometry Dataset (BPOD) for benchmarking visual odometry algo- rithms on data from head-mounted sensors. This dataset was captured with stereo and RGB streams from RealSense cameras with rolling and global shutters in 12 diverse in- door and outdoor locations on Brown University’s cam- pus. Its associated ground-truth trajectories were gener- ated from third-person videos that documented the recorded pedestrians’ positions relative to stick-on markers placed along their paths. We evaluate the performance of canoni- cal approaches representative of direct, feature-based, and learning-based visual odometry methods on BPOD. Our finding is that current methods which are successful on other benchmarks fail on BPOD. The failure modes cor- respond in part to rapid pedestrian rotation, erratic body movements, etc. We hope this dataset will play a significant role in the identification of these failure modes and in the design, development, and evaluation of pedestrian odome- try algorithms.more » « less
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Fabbri, Ricardo; Duff, Timothy; Fan, Hongyi; Regan, Margaret H.; de Pinho, David da; Tsigaridas, Elias; Wampler, Charles W.; Hauenstein, Jonathan D.; Giblin, Peter J.; Kimia, Benjamin; et al (, IEEE Transactions on Pattern Analysis and Machine Intelligence)Abstract—We present a method for solving two minimal problems for relative camera pose estimation from three views, which are based on three view correspondences of (i) three points and one line and the novel case of (ii) three points and two lines through two of the points. These problems are too difficult to be efficiently solved by the state of the art Gro ̈bner basis methods. Our method is based on a new efficient homotopy continuation (HC) solver framework MINUS, which dramatically speeds up previous HC solving by specializing HC methods to generic cases of our problems. We characterize their number of solutions and show with simulated experiments that our solvers are numerically robust and stable under image noise, a key contribution given the borderline intractable degree of nonlinearity of trinocular constraints. We show in real experiments that (i) SIFT feature location and orientation provide good enough point-and-line correspondences for three-view reconstruction and (ii) that we can solve difficult cases with too few or too noisy tentative matches, where the state of the art structure from motion initialization fails.more » « less
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Fan, Hongyi; Kunsberg, Benjamin; Kimia, Benjamin (, IEEE)
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Fabbri, Ricardo; Duff, Timothy; Fan, Hongyi; Regan, Margaret H.; da Costa de Pinho, David; Tsigaridas, Elias; Wampler, Charles W.; Hauenstein, Jonathan D.; Giblin, Peter J.; Kimia, Benjamin; et al (, 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR))
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