This paper describes a novel method for image corner detection based on the
curvature scale-space (CSS) representation. The first step is to extract e
dges from the original image using a Canny detector. The corner points of a
n image are defined as points where image edges have their maxima of absolu
te curvature. The corner points are detected at a high scale of the CSS and
tracked through multiple lower scales to improve localization. This method
is very robust to noise, and we believe that it performs better than the e
xisting corner detectors. An improvement to Canny edge detector's response
to 45 degrees and 135 degrees edges is also proposed. Furthermore, the CSS
detector can provide additional point features (curvature zero-crossings of
image edge contours) in addition to the traditional corners.