A method for implementing a soft data association modeled with probabilities is provided. The association probabilities are computed in an intertwined expectation maximization (EM) scheme with an optical flow computation that maximizes the expectation (marginalization) over all associations. In addition, longer tracks can be enabled by computing the affine deformation with respect to the initial point and using the resulting residual as a measure of persistence. The computed optical flow enables a varying temporal integration that is different for every feature and sized inversely proportional to the length of the optical flow. The results can be seen in egomotion and very fast vehicle sequences.
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