Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

CLIPAway: Harmonizing Focused Embeddings for Removing Objects via Diffusion Models

About

Advanced image editing techniques, particularly inpainting, are essential for seamlessly removing unwanted elements while preserving visual integrity. Traditional GAN-based methods have achieved notable success, but recent advancements in diffusion models have produced superior results due to their training on large-scale datasets, enabling the generation of remarkably realistic inpainted images. Despite their strengths, diffusion models often struggle with object removal tasks without explicit guidance, leading to unintended hallucinations of the removed object. To address this issue, we introduce CLIPAway, a novel approach leveraging CLIP embeddings to focus on background regions while excluding foreground elements. CLIPAway enhances inpainting accuracy and quality by identifying embeddings that prioritize the background, thus achieving seamless object removal. Unlike other methods that rely on specialized training datasets or costly manual annotations, CLIPAway provides a flexible, plug-and-play solution compatible with various diffusion-based inpainting techniques.

Yigit Ekin, Ahmet Burak Yildirim, Erdem Eren Caglar, Aykut Erdem, Erkut Erdem, Aysegul Dundar• 2024

Related benchmarks

TaskDatasetResultRank
Object RemovalRemovalBench
Latency (s)3
15
Object RemovalRORD 2022 (test)
BG Similarity74.4
11
Object RemovalOpenImages V7 2020 (test)
BG Similarity65.6
11
Object RemovalRemovalBench paired
SSIM0.722
11
Object RemovalCOCO 2017 (val)
FID57.32
9
Object RemovalRORD (test)
BG Similarity0.744
9
Object RemovalOpenImages V7 (test)
BG Similarity65.6
9
Showing 7 of 7 rows

Other info

Code

Follow for update