359 research outputs found
Dynamics, Stability, and Foresight in the Shapley-Scarf Housing Market
While most of the literature starting with Shapley and Scarf (1974) have considered a static exchange economy with indivisibilities, this paper studies the dynamics of such an economy. We find that both the dynamics generated by competitive equilibrium and the one generated by weakly dominance relation, converge to a set of allocations we define as strictly stable, which we can show to exist. Moreover, we show that even when only pairwise exchanges between two traders are allowed, the strictly stable allocations are attained eventually if traders are sufficiently farsighted.Indivisible Goods Market, Dynamics, Competitive Allocation, Strict Core, Foresight, Stable Set
Temporal shape super-resolution by intra-frame motion encoding using high-fps structured light
One of the solutions of depth imaging of moving scene is to project a static
pattern on the object and use just a single image for reconstruction. However,
if the motion of the object is too fast with respect to the exposure time of
the image sensor, patterns on the captured image are blurred and reconstruction
fails. In this paper, we impose multiple projection patterns into each single
captured image to realize temporal super resolution of the depth image
sequences. With our method, multiple patterns are projected onto the object
with higher fps than possible with a camera. In this case, the observed pattern
varies depending on the depth and motion of the object, so we can extract
temporal information of the scene from each single image. The decoding process
is realized using a learning-based approach where no geometric calibration is
needed. Experiments confirm the effectiveness of our method where sequential
shapes are reconstructed from a single image. Both quantitative evaluations and
comparisons with recent techniques were also conducted.Comment: 9 pages, Published at the International Conference on Computer Vision
(ICCV 2017
Generalization of pixel-wise phase estimation by CNN and improvement of phase-unwrapping by MRF optimization for one-shot 3D scan
Active stereo technique using single pattern projection, a.k.a. one-shot 3D
scan, have drawn a wide attention from industry, medical purposes, etc. One
severe drawback of one-shot 3D scan is sparse reconstruction. In addition,
since spatial pattern becomes complicated for the purpose of efficient
embedding, it is easily affected by noise, which results in unstable decoding.
To solve the problems, we propose a pixel-wise interpolation technique for
one-shot scan, which is applicable to any types of static pattern if the
pattern is regular and periodic. This is achieved by U-net which is pre-trained
by CG with efficient data augmentation algorithm. In the paper, to further
overcome the decoding instability, we propose a robust correspondence finding
algorithm based on Markov random field (MRF) optimization. We also propose a
shape refinement algorithm based on b-spline and Gaussian kernel interpolation
using explicitly detected laser curves. Experiments are conducted to show the
effectiveness of the proposed method using real data with strong noises and
textures.Comment: MVA202
- …