Separating Non-Stationary from Stationary Scene Components in a Sequence of Real World TV Images
نویسندگان
چکیده
Results are presented for a new method to ident i fy images of moving objects in a sequence of scene images, e.g. from a TV-camera observing a street intersect ion. The reported approach exploits the assumption that systematic greyvalue differences based on second order s ta t is t ics between consecutive frames are due to images of moving objects. No knowledge is assumed about size, shape, or texture for images of stationary or non-stationary scene components.
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