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3 months ago

CAT-Seg: Cost Aggregation for Open-Vocabulary Semantic Segmentation

Seokju Cho Heeseong Shin Sunghwan Hong Anurag Arnab Paul Hongsuck Seo Seungryong Kim

CAT-Seg: Cost Aggregation for Open-Vocabulary Semantic Segmentation

Abstract

Open-vocabulary semantic segmentation presents the challenge of labeling each pixel within an image based on a wide range of text descriptions. In this work, we introduce a novel cost-based approach to adapt vision-language foundation models, notably CLIP, for the intricate task of semantic segmentation. Through aggregating the cosine similarity score, i.e., the cost volume between image and text embeddings, our method potently adapts CLIP for segmenting seen and unseen classes by fine-tuning its encoders, addressing the challenges faced by existing methods in handling unseen classes. Building upon this, we explore methods to effectively aggregate the cost volume considering its multi-modal nature of being established between image and text embeddings. Furthermore, we examine various methods for efficiently fine-tuning CLIP.

Code Repositories

openrobotlab/ov_parts
jax
Mentioned in GitHub
KU-CVLAB/CAT-Seg
Official
pytorch
Mentioned in GitHub
blumenstiel/CAT-Seg-MESS
pytorch
Mentioned in GitHub

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CAT-Seg: Cost Aggregation for Open-Vocabulary Semantic Segmentation | Papers | HyperAI