Performance evaluation in visual surveillance using the F-measure
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Abstract: We propose a classification for a set of pixel-level algorithms employed in video surveillance applications and define a performance evaluation metric, based on an analysis of experimental data, for comparing the addressed algorithms. The results of such a comparison are presented and discussed. The set of algorithms considered in this work comprises several algorithms widely known in literature.