Region Matching by Optimal Fuzzy Dissimilarity
نویسندگان
چکیده
To extract region features independent on translation, rotation and scaling of object, a new coordinate system is established. The origin of the new coordinate system can be set at the mass center of the object. The new axis ' x and ' y are based on the main inertia axes. The size of the object can be identified by its minimal constraint rectangle called feature rectangle which has minimal area and contains the object based on the new coordinate system. Based on the new coordinate system of the object, the features of regions can be obtained using
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تاریخ انتشار 2000