Post
384
🚧 Reproducing LBM-Eraser… in the open [1] !
A major recent paper on erasing is OmniEraser [2].
They open-sourced an evaluation dataset [3] (and I'm using it for the evaluation of our LBM-Eraser 😉).
It's not a big dataset (70 samples), but it's good quality pairs, and that's what matters !
cc @BaiLing
[1] Finegrain LBM Fork : https://github.com/finegrain-ai/LBM
[2] OmniEraser: VDOR: A Video-based Dataset for Object Removal via Sequence Consistency (2501.07397)
[3] BaiLing/RemovalBench
[4] LBM paper: LBM: Latent Bridge Matching for Fast Image-to-Image Translation (2503.07535)
A major recent paper on erasing is OmniEraser [2].
They open-sourced an evaluation dataset [3] (and I'm using it for the evaluation of our LBM-Eraser 😉).
It's not a big dataset (70 samples), but it's good quality pairs, and that's what matters !
cc @BaiLing
[1] Finegrain LBM Fork : https://github.com/finegrain-ai/LBM
[2] OmniEraser: VDOR: A Video-based Dataset for Object Removal via Sequence Consistency (2501.07397)
[3] BaiLing/RemovalBench
[4] LBM paper: LBM: Latent Bridge Matching for Fast Image-to-Image Translation (2503.07535)