Orientation (computer Vision)
In computer vision and image processing a common assumption is that sufficiently small image regions can be characterized as locally one-dimensional, e.g., in terms of lines or edges. For natural images this assumption is usually correct except at specific points, e.g., corners or line junctions or crossings, or in regions of high frequency textures. However, what size the regions have to be in order to appear as one-dimensional varies both between images and within an image. Also, in practice a local region is never exactly one-dimensional but can be so to a sufficient degree of approximation.
Image regions which are one-dimensional are also referred to as simple or intrinsic one-dimensional (i1D).
Given an image of dimension d (d = 2 for ordinary images), a mathematical representation of a local i1D image region is
where is the image intensity function which varies over a local image coordinate (a d-dimensional vector), is a one-variable function, and is a unit vector.
The intensity function is constant in all directions which are perpendicular to . Intuitively, the orientation of an i1D-region is therefore represented by the vector . However, for a given, is not uniquely determined. If
then can be written as
which implies that also is a valid representation of the local orientation.
In order to avoid this ambiguity in the representation of local orientation two representations have been proposed
- The double angle representation
- The tensor representation
The double angle representation is only valid for 2D images (d=2), but the tensor representation can be defined for arbitrary dimensions d of the image data.
Read more about Orientation (computer Vision): Relation To Direction, Relation To Gradients, Estimation of Local Image Orientation, Application of Local Image Orientation
Famous quotes containing the word orientation:
“Institutions of higher education in the United States are products of Western society in which masculine values like an orientation toward achievement and objectivity are valued over cooperation, connectedness and subjectivity.”
—Yolanda Moses (b. 1946)