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ReMOVE: A Reference-free Metric for Object Erasure

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We introduce $\texttt{ReMOVE}$, a novel reference-free metric for assessing object erasure efficacy in diffusion-based image editing models post-generation. Unlike existing measures such as LPIPS and CLIPScore, $\texttt{ReMOVE}$ addresses the challenge of evaluating inpainting without a reference image, common in practical scenarios. It effectively distinguishes between object removal and replacement. This is a key issue in diffusion models due to stochastic nature of image generation. Traditional metrics fail to align with the intuitive definition of inpainting, which aims for (1) seamless object removal within masked regions (2) while preserving the background continuity. $\texttt{ReMOVE}$ not only correlates with state-of-the-art metrics and aligns with human perception but also captures the nuanced aspects of the inpainting process, providing a finer-grained evaluation of the generated outputs.

Aditya Chandrasekar, Goirik Chakrabarty, Jai Bardhan, Ramya Hebbalaguppe, Prathosh AP• 2024

Related benchmarks

TaskDatasetResultRank
Object Removal Assessment EvaluationRORD
Kendall's tau0.1284
24
Object Removal Assessment EvaluationRoSE
Kendall's tau0.21
24
Object Removal Assessment EvaluationPROVE-M
Kendall's Tau0.33
24
Object Removal Assessment EvaluationOBER-Wild
Kendall's Tau0.54
12
Object Removal Assessment EvaluationPROVE-H
Kendall's tau0.23
12
Object Removal Assessment EvaluationDAVIS
Kendall's tau0.15
12
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