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Enhanced-alignment Measure for Binary Foreground Map Evaluation

Deng-Ping Fan, Cheng Gong, Yang Cao, Bo Ren, Ming‐Ming Cheng, Ali Borji

20181,502 citationsDOIOpen Access PDF

Abstract

The existing binary foreground map (FM) measures address various types of errors in either pixel-wise or structural ways. These measures consider pixel-level match or image-level information independently, while cognitive vision studies have shown that human vision is highly sensitive to both global information and local details in scenes. In this paper, we take a detailed look at current binary FM evaluation measures and propose a novel and effective E-measure (Enhanced-alignment measure). Our measure combines local pixel values with the image-level mean value in one term, jointly capturing image-level statistics and local pixel matching information. We demonstrate the superiority of our measure over the available measures on 4 popular datasets via 5 meta-measures, including ranking models for applications, demoting generic, random Gaussian noise maps, ground-truth switch, as well as human judgments. We find large improvements in almost all the meta-measures. For instance, in terms of application ranking, we observe improvement ranging from 9.08% to 19.65% compared with other popular measures.

Topics & Concepts

PixelMeasure (data warehouse)Computer scienceArtificial intelligenceGround truthRanking (information retrieval)Binary numberMatching (statistics)Pattern recognition (psychology)RangingNoise (video)Computer visionBinary dataImage (mathematics)Data miningMathematicsStatisticsArithmeticTelecommunicationsVisual Attention and Saliency DetectionAdvanced Image and Video Retrieval TechniquesVideo Surveillance and Tracking Methods
Enhanced-alignment Measure for Binary Foreground Map Evaluation | Litcius