AIUnet:基于u2net的参考图像分割渐近推理

Jiangquan Li, Shimin Shan, Yu Liu, Kaiping Xu, Xiwen Hu, Mingcheng Xue
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引用次数: 0

摘要

参考图像分割旨在通过提供自然语言表达从图像中分割出目标对象。虽然最近的方法取得了显着的进步,但很少有人为跨模型特征设计有效的深度融合过程或专注于视觉的精细细节。本文提出了一种基于u2net的渐近推理方法AIUnet。AIUnet的核心是跨模型u2net (CMU)模块,该模块将文本引导视觉(TGV)模块集成到u2net中,实现了不同尺度下跨模型信息的高效交互。CMU更多地关注高级特征中的位置信息,并在低级特征中学习更精细的细节信息。此外,我们提出了一个特征增强解码器(FED)模块,以提高对精细细节的识别,并将跨模型特征解码为二进制掩码。FED模块利用一种简单的基于cnn的方法来增强多模态特征。我们的实验表明,AIUnet在三个标准数据集上取得了具有竞争力的结果。代码可从https://github.com/LJQbiu/AIUnet获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AIUnet: Asymptotic inference with U2-Net for referring image segmentation
Referring image segmentation aims to segment a target object from an image by providing a natural language expression. While recent methods have made remarkable advancements, few have designed effective deep fusion processes for cross-model features or focused on the fine details of vision. In this paper, we propose AIUnet, an asymptotic inference method that uses U2-Net. The core of AIUnet is a Cross-model U2-Net (CMU) module, which integrates a Text guide vision (TGV) module into U2-Net, achieving efficient interaction of cross-model information at different scales. CMU focuses more on location information in high-level features and learns finer detail information in low-level features. Additionally, we propose a Features Enhance Decoder (FED) module to improve the recognition of fine details and decode cross-model features to binary masks. The FED module leverages a simple CNN-based approach to enhance multi-modal features. Our experiments show that AIUnet achieved competitive results on three standard datasets.Code is available at https://github.com/LJQbiu/AIUnet.
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