Pattern recognition in cattle brand using bag of visual words and support vector machines multi-class

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Abstract

The recognition images of cattle brand in an automatic way is a necessity to governmental organs responsible for this activity. To help this process, this work presents a method that consists in using Bag of Visual Words for extracting of characteristics from images of cattle brand and Support Vector Machines Multi-Class for classification. This method consists of six stages: a) select database of images; b) extract points of interest (SURF); c) create vocabulary (K-means); d) create vector of image characteristics (visual words); e) train and sort images (SVM); f) evaluate the classification results. The accuracy of the method was tested on database of municipal city hall, where it achieved satisfactory results, reporting 86.02% of accuracy and 56.705 seconds of processing time, respectively.

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Silva, C., Welfer, D., & Dornelles, C. (2018). Pattern recognition in cattle brand using bag of visual words and support vector machines multi-class. Inteligencia Artificial, 21(61), 1–13. https://doi.org/10.4114/intartif.vol21iss61pp1-13

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