A Novel Shape Descriptor for Object Recognition

Authors

Keywords:

Shape Descriptor, nesne tanıma, MNIST

Abstract

In this study a novel shape descriptor for object recognition is proposed. As a preprocessing stage, Canny edge detection [4] is applied to input images. Output of Canny edge detector, namely edge image, is sampled and various number of points are selected. Chosen points are input to the new shape descriptor. Proposed shape descriptor is composed of deviations from average range and average angle. Shape descriptor is used as a feature extractor output of which is fed to linear classifier. Linear classifier is trained using pseudo-inverse and gradient descent techniques. Full MNIST dataset is used to test the system and results are reported.

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Published

2023-03-31

How to Cite

ÇAKI, E. E., & GÖKÇE, C. O. (2023). A Novel Shape Descriptor for Object Recognition. International Journal of Computational and Experimental Science and Engineering, 9(1), 1–5. Retrieved from https://ijcesen.com/index.php/ijcesen/article/view/181

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Section

Research Article