We construct uniform and point-wise asymptotic confidence sets for the single
edge in an otherwise smooth image function which are based on rotated
differences of two one-sided kernel estimators. Using methods from
M-estimation, we show consistency of the estimators of location, slope and
height of the edge function and develop a uniform linearization of the contrast
process. The uniform confidence bands then rely on a Gaussian approximation of
the score process together with anti-concentration results for suprema of
Gaussian processes, while point-wise bands are based on asymptotic normality.
The finite-sample performance of the point-wise proposed methods is
investigated in a simulation study. An illustration to real-world image
processing is also given