Explore In-Context Segmentation via Latent Diffusion Models
arxiv(2024)
摘要
In-context segmentation has drawn more attention with the introduction of
vision foundation models. Most existing approaches adopt metric learning or
masked image modeling to build the correlation between visual prompts and input
image queries. In this work, we explore this problem from a new perspective,
using one representative generation model, the latent diffusion model (LDM). We
observe a task gap between generation and segmentation in diffusion models, but
LDM is still an effective minimalist for in-context segmentation. In
particular, we propose two meta-architectures and correspondingly design
several output alignment and optimization strategies. We have conducted
comprehensive ablation studies and empirically found that the segmentation
quality counts on output alignment and in-context instructions. Moreover, we
build a new and fair in-context segmentation benchmark that includes both image
and video datasets. Experiments validate the efficiency of our approach,
demonstrating comparable or even stronger results than previous specialist
models or visual foundation models. Our study shows that LDMs can also achieve
good enough results for challenging in-context segmentation tasks.
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