Motion detection using a multi-scale image representation strategy

In this paper, the authors describe a hierarchical framework for the computation of displacement fields from a sequence of images acquired by a moving camera and containing several moving objects. They also describe a matching algorithm which is consistent with the proposed framework and they represent some experimental results demonstrating the robustness of their approach.

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