2 research outputs found

    Two-Dimensional Matched Filtering for Motion Estimation

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    In this work, we describe a frequency domain technique for the estimation of multiple superimposed motions in an image sequence. The least-squares optimum approach involves the computation of the three-dimensional (3-D) Fourier transform of the sequence, followed by the detection of one or more planes in this domain with high energy concentration. We present a more efficient algorithm, based on the properties of the Radon transform and the two-dimensional (2-D) fast Fourier transform, which can sacrifice little performance for significant computational savings. We accomplish the motion detection and estimation by designing appropriate matched filters. The performance is demonstrated on two image sequences. Index Terms---Discrete Fourier transform, estimation, image line pattern analysis, image motion analysis, matched filters. I. INTRODUCTION The problem of motion estimation from an image sequence has a variety of applications. In particular, the estimation of multiple superimposed ..

    Two-dimensional matched filtering for motion estimation

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