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    Independent 3D Motion Detection Based on Depth Elimination in Normal Flow Fields

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    This paper considers a spec @ problem of visual percep-tion of motion, namely the problem of visual detection of independent 30 motion. Most of the existing techniques for solving this problem rely on restrictive assumptions about the environment, the observer’s motion, or both. Moreovel; they are based on the computation of optical jow, which amounts to solving the ill-posed correspondence problem. In this work, independent motion detection is formulated as robust parameter estimation applied to the visual input ac-quired by a binoculal; rigidly moving observer Depth and motion measurements are combined in a linear model. The parameters of this model are related to the parameters of self-motion (egomotion) and the parameters of the stereo-scopic configuration of the observer The robust estimation of this model leads to a segmentation of the scene based on 30 motion. The method avoids the correspondence problem by employing only normaljow fields. Experimental results demonstrate the effectiveness of this method in detecting independent motion in scenes with large depth variations, without any constraints imposed on observer motion. 1
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