Search Results for author: Fangjian Lin

Found 7 papers, 2 papers with code

AxWin Transformer: A Context-Aware Vision Transformer Backbone with Axial Windows

no code implementations2 May 2023 Fangjian Lin, Yizhe Ma, Sitong Wu, Long Yu, Shengwei Tian

Recently Transformer has shown good performance in several vision tasks due to its powerful modeling capabilities.

Exploring vision transformer layer choosing for semantic segmentation

no code implementations2 May 2023 Fangjian Lin, Yizhe Ma, Shengwei Tian

We validate the effectiveness of our method on different datasets and models and surpass previous state-of-the-art methods.

feature selection Semantic Segmentation

UniNeXt: Exploring A Unified Architecture for Vision Recognition

1 code implementation26 Apr 2023 Fangjian Lin, Jianlong Yuan, Sitong Wu, Fan Wang, Zhibin Wang

Interestingly, the ranking of these spatial token mixers also changes under our UniNeXt, suggesting that an excellent spatial token mixer may be stifled due to a suboptimal general architecture, which further shows the importance of the study on the general architecture of vision backbone.

Spatial Token Mixer

Feature Selective Transformer for Semantic Image Segmentation

no code implementations26 Mar 2022 Fangjian Lin, Tianyi Wu, Sitong Wu, Shengwei Tian, Guodong Guo

In this work, we focus on fusing multi-scale features from Transformer-based backbones for semantic segmentation, and propose a Feature Selective Transformer (FeSeFormer), which aggregates features from all scales (or levels) for each query feature.

feature selection Image Segmentation +2

StructToken : Rethinking Semantic Segmentation with Structural Prior

no code implementations23 Mar 2022 Fangjian Lin, Zhanhao Liang, Sitong Wu, Junjun He, Kai Chen, Shengwei Tian

In previous deep-learning-based methods, semantic segmentation has been regarded as a static or dynamic per-pixel classification task, \textit{i. e.,} classify each pixel representation to a specific category.

Decision Making Segmentation +1

Fully Transformer Networks for Semantic Image Segmentation

1 code implementation8 Jun 2021 Sitong Wu, Tianyi Wu, Fangjian Lin, Shengwei Tian, Guodong Guo

Transformers have shown impressive performance in various natural language processing and computer vision tasks, due to the capability of modeling long-range dependencies.

Face Parsing Image Segmentation +2

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