ArXiv TLDR

PLAF: Pixel-wise Language-Aligned Feature Extraction for Efficient 3D Scene Understanding

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2604.15770

Junjie Wen, Junlin He, Fei Ma, Jinqiang Cui

cs.CVcs.RO

TLDR

PLAF introduces a pixel-wise language-aligned feature extraction framework for efficient and accurate open-vocabulary 3D scene understanding.

Key contributions

  • Proposes PLAF, a framework for dense, accurate pixel-wise language-aligned feature extraction in 2D.
  • Enables open-vocabulary expressiveness while maintaining spatial precision for 3D scene understanding.
  • Introduces an efficient semantic storage and querying scheme, significantly reducing 2D/3D data redundancy.

Why it matters

Open-vocabulary 3D scene understanding is critical but struggles with efficiency and precision. PLAF addresses this by providing language-aligned, pixel-precise features and an efficient storage method. This enables more scalable and accurate semantic understanding of complex 3D environments.

Original Abstract

Accurate open-vocabulary 3D scene understanding requires semantic representations that are both language-aligned and spatially precise at the pixel level, while remaining scalable when lifted to 3D space. However, existing representations struggle to jointly satisfy these requirements, and densely propagating pixel-wise semantics to 3D often results in substantial redundancy, leading to inefficient storage and querying in large-scale scenes. To address these challenges, we present \emph{PLAF}, a Pixel-wise Language-Aligned Feature extraction framework that enables dense and accurate semantic alignment in 2D without sacrificing open-vocabulary expressiveness. Building upon this representation, we further design an efficient semantic storage and querying scheme that significantly reduces redundancy across both 2D and 3D domains. Experimental results show that \emph{PLAF} provides a strong semantic foundation for accurate and efficient open-vocabulary 3D scene understanding. The codes are publicly available at https://github.com/RockWenJJ/PLAF.

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