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		    SimSAM: Simple Siamese Representations Based Semantic Affinity Matrix for Unsupervised Image Segmentation
			- Citation Author(s):
 - Submitted by:
 - Chanda Grover Kamra
 - Last updated:
 - 8 February 2024 - 3:06am
 - Document Type:
 - Supplementary Material
 - Document Year:
 - 2024
 - Presenters:
 - Chanda Grover Kamra
 - Paper Code:
 - 1183
 
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Recent developments in self-supervised learning (SSL) have made it possible to learn data representations without the need for annotations.
, which enhances the performance of various downstream tasks.
Inspired by the non-contrastive SSL approach (SimSiam), we introduce a novel framework SimSAM to compute the Semantic Affinity Matrix, which is significant for unsupervised image segmentation. Given an image, SimSAM first extracts features using pre-trained DINO-ViT, then projects the features to predict the correlations of dense features in a non-contrastive way. We show applications of the Semantic Affinity Matrix in object segmentation and semantic segmentation tasks. Our code is available at https://anonymous.4open.science/r/SimSAM-E746/.
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