Feature Detection
EE 576: Computer Vision
Project 1 Artifact
Jounsup Park
Feature Descriptor
1. Normal 21x21 window feature descriptors : 21x21 window size is enough to get large AUCs.
I got the window size by experiments.
2.
Dominant
Orientation methods: Dominant orientation method is useful to detect the
matching features in rotated image because it compensates the rotation. First,
I have computed the dominant orientations by larger eigenvalue and adopted to
the feature descriptors.
Harris
Image
HarrisImage
(Yosemite1.ppm, Yosemite2.ppm)
Harris Image, graf (img1.ppm, img2.ppm, img3.ppm)
ROC curves
ROC
curves and AUC of the feature matching process for graf
and leuven.
ROC curves
My Feature Descriptor
I couldn’t finish my own feature descriptor using dominant orientation
method. I have to resize and map the new axis after rotating the images.
However, on the source, you could find the source to get the angle by compute
the eigenvalues. It will make feature descriptor much stronger than without
using the dominant orientations.