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Indian Coin Identification and Worth Calculation System by High Intensity Point Detection

A. Dalip joe, M. Meenakumari


Accurate characterization and speed reorganization is an important issue in coin identification and counting system. The target of this paper is to classify the Indian coins of different denomination discharged recently. The objective is to notice the Indian coins and count its total worth. The system is projected to design coin recognition by applying AHH Algorithm, supported the parameters of Indian coins such as size, shape, weight, surface and so on . This paper presents a coin recognition methodology with rotation invariance. Hough Transform is used for geometry detection of coin.


Smoothing, Interest Point Detection, Hough Transform Technique

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