Litcius/Paper detail

An Efficient Sampling-Based Attention Network for Semantic Segmentation

Xingjian He, Jing Liu, Weining Wang, Hanqing Lu

2022IEEE Transactions on Image Processing19 citationsDOI

Abstract

Self-attention is widely explored to model long-range dependencies in semantic segmentation. However, this operation computes pair-wise relationships between the query point and all other points, leading to prohibitive complexity. In this paper, we propose an efficient Sampling-based Attention Network which combines a novel sample method with an attention mechanism for semantic segmentation. Specifically, we design a Stochastic Sampling-based Attention Module (SSAM) to capture the relationships between the query point and a stochastic sampled representative subset from a global perspective, where the sampled subset is selected by a Stochastic Sampling Module. Compared to self-attention, our SSAM achieves comparable segmentation performance while significantly reducing computational redundancy. In addition, with the observation that not all pixels are interested in the contextual information, we design a Deterministic Sampling-based Attention Module (DSAM) to sample features from a local region for obtaining the detailed information. Extensive experiments demonstrate that our proposed method can compete or perform favorably against the state-of-the-art methods on the Cityscapes, ADE20K, COCO Stuff, and PASCAL Context datasets.

Topics & Concepts

Computer sciencePascal (unit)SegmentationArtificial intelligencePoint (geometry)Sample (material)Context (archaeology)Data miningPixelImage segmentationSampling (signal processing)Pattern recognition (psychology)Context modelMachine learningAttention networkObject detectionSemantics (computer science)Point processImage (mathematics)AlgorithmStochastic processTheoretical computer scienceAdvanced Neural Network ApplicationsAutomated Road and Building ExtractionHuman Mobility and Location-Based Analysis