%0 Conference Paper %A Flores Vidal, Pablo Arcadio %A Gómez González, Daniel %A Castro Cantalejo, Javier %A Montero De Juan, Francisco Javier %T New aggregation strategies in color edge detection with HSV Images %D 2022 %U https://hdl.handle.net/20.500.14352/110389 %X Most edge detection algorithms only deal with grayscale images, while their use with color images remains an open problem. This paper explores different approaches to aggregating color information from RGB and HSV images for edge extraction purposes through the usage of the Canny algorithm. The Berkeley’s image data set is used to evaluate the performance of the different aggregation methods. Precision, Recall and F-score are computed. Better performance of aggregations with HSV channels than with RGB’s was found. This article also shows that depending on the type of image used -RGB or HSV-, some methodologies are more appropriate than others. %~