patchmatch和patchmatchstereo算法的python实现

Overview

patchmatch

patchmatch以及patchmatchstereo算法的python版实现

  • patchmatch参考 github
  • patchmatchstereo参考李迎松博士的c++版代码

由于patchmatchstereo没有做任何优化,并且是python的代码,主要是方便解析算法的原理构造,适合跑小图,patch_size尽量小一些。

使用

python patchmatchstereo.py

patch_size=5, n_iter=3 结果

| Initialize memory cost 0.002 seconds.
| Initialize parameters cost 7.834 seconds.
| Initialize gray cost 4.167 seconds.
| Initialize gradient cost 2.902 seconds.
| Initialize cost 140.518 seconds.
| Initialize cost 9.439 seconds.
| Propagation iter 0 cost 2033.533 seconds.
| Propagation iter 0 cost 1755.244 seconds.
| Propagation iter 1 cost 1753.473 seconds.
| Propagation iter 1 cost 1764.548 seconds.
| Propagation iter 2 cost 1839.081 seconds.
| Propagation iter 2 cost 1751.648 seconds.
| Propagation cost 10897.527 seconds.
| Plane to disparity cost 1.132 seconds.
| LR check cost 2.028 seconds.
| Fill holes cost 1.012 seconds.
| Total match cost 10916.557 seconds.
| Get disparity map cost 0.004 seconds.
| Get disparity cloud cost 24.264 seconds.

Owner
Sanders Bao
Stay Hungry, Stay Foolish.
Sanders Bao
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