Objects Recognition Using the Histogram Based on Descriptors of SIFT and SURF
نویسندگان
چکیده
This article reviews a method of histograms based on descriptors of SIFT and SURF and their application in Recognition of three-dimensional object recognition from various view. This method will be provided for Recognition of objects in a set of three-dimensional objects and images of ETH80 databases to assess the effectiveness of methods used in determining the threedimensional objects. Finally, some of these results will be presented.
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