Lecture_1027_stereo_01.jpg
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Summary
Description Lecture 1027 stereo 01.jpg |
English:
A visual representation of the variables used in image rectification example.
|
Date | |
Source | Lecture presentation for computer vision. Course lecturer has seen draft of wikipedia article with this image included and has encouraged me to upload to wikipedia. |
Author | Silvio Savarese |
Licensing
Public domain Public domain false false |
This image of simple geometry is ineligible for copyright and therefore in the public domain , because it consists entirely of information that is common property and contains no original authorship. |