Segmentation unknown object using unsupervised learning and stable diffusion with DiffSeg

--

Segmentation unknown object using unsupervised learning and stable diffusion with DiffSeg

Diffuse, Attend, and Segment: Unsupervised Zero-Shot Segmentation using Stable Diffusion
arXiv paper abstract https://arxiv.org/abs/2308.12469
arXiv PDF paper https://arxiv.org/pdf/2308.12469.pdf

Producing quality segmentation masks for images is a fundamental problem in computer vision.

… However, constructing a model capable of segmenting anything in a zero-shot manner without any annotations is still challenging.

… propose to utilize the self-attention layers in stable diffusion models to achieve this goal because the pre-trained stable diffusion model has learned inherent concepts of objects within its attention layers.

… introduce a simple yet effective iterative merging process based on measuring KL divergence among attention maps to merge them into valid segmentation masks.

The proposed method does not require any training or language dependency to extract quality segmentation for any images.

… method surpasses the prior unsupervised zero-shot SOTA method by an absolute 26% in pixel accuracy and 17% in mean IoU.

Stay up to date. Subscribe to my posts https://morrislee1234.wixsite.com/website/contact
Web site with my other posts by category https://morrislee1234.wixsite.com/website

LinkedIn https://www.linkedin.com/in/morris-lee-47877b7b

Photo by Ivan Bandura on Unsplash

--

--

AI News Clips by Morris Lee: News to help your R&D
AI News Clips by Morris Lee: News to help your R&D

Written by AI News Clips by Morris Lee: News to help your R&D

A computer vision consultant in artificial intelligence and related hitech technologies 37+ years. Am innovator with 66+ patents and ready to help a firm's R&D.

No responses yet