TR-A-0129 :1992.1.13

E.B. Gamble, Jr.

Enhanced Discontinuity Detection from Postulated Discontinuities

Abstract:We describe a discontinuity detector that integrates visual information to suppress the pervasive noise in surface property data. The discontinuity detector is based on the notion of 'constrained kernels' and 'postulated discontinuities.' The kernels arise as solutions to the diffusion equation in the presence of local, static boundary conditions provided by the postulated discontinuities. The resulting kernels smooth the surface property data; they are Gaussian-like except near the postulated discontinuities. Unlike most visual integration schemes, our detector does not suffer from problems regarding computability and parameter specification; it is fast and accurate. In addition, the detector eliminates the pervasive ‘displacement errors’ in surface property data. We describe these displacement errors, integrate intensity edges (as postulated discontinuities) with stereo depth and optical-flow to compute depth and motion discontinuities, and compare our detector to other discontinuity detection approaches. This is a reformated version of a paper submitted to the Second European Conference on Computer Vision in Santa Margherita Ligure, Italy. The original submission to ECCV'92 was dated 8 October 1991.