Authors
Max Mignotte, Christophe Collet, Patrick Perez, Patrick Bouthemy
Publication date
2000/2
Journal
IEEE Transactions on Pattern Analysis and Machine Intelligence
Volume
22
Issue
2
Pages
129-141
Publisher
IEEE
Description
We present an original statistical classification method using a deformable template model to separate natural objects from man-made objects in an image provided by a high resolution sonar. A prior knowledge of the manufactured object shadow shape is captured by a prototype template, along with a set of admissible linear transformations, to take into account the shape variability. Then, the classification problem is defined as a two-step process: 1) the detection problem of a region of interest in the input image is stated as the minimization of a cost function; and 2) the value of this function at convergence allows one to determine whether the desired object is present or not in the sonar image. The energy minimization problem is tackled using relaxation techniques. In this context, we compare the results obtained with a deterministic relaxation technique and two stochastic relaxation methods: simulated annealing …
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