Poster
SMITE: Segment Me In TimE
Amirhossein Alimohammadi · Sauradip Nag · Saeid Asgari · Andrea Tagliasacchi · Ghassan Hamarneh · Ali Mahdavi Amiri
Hall 3 + Hall 2B #79
Segmenting an object in a video presents significant challenges. Each pixel must be accurately labeled, and these labels must remain consistent across frames. The difficulty increases when the segmentation is with arbitrary granularity, meaning the number of segments can vary arbitrarily, and masks are defined based on only one or a few sample images. In this paper, we address this issue by employing apre-trained text to image diffusion model supplemented with an additional tracking mechanism. We demonstrate that our approach can effectively manage various segmentation scenarios and outperforms state-of-the-art alternatives. The project page is available at https://segment-me-in-time.github.io/
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