BridgeNet: Comprehensive and Effective Feature Interactions via Bridge Feature for Multi-Task Dense Predictions

Jingdong Zhang;Jiayuan Fan;Peng Ye;Bo Zhang;Hancheng Ye;Baopu Li;Yancheng Cai;Tao Chen
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Abstract

Multi-task dense prediction aims at handling multiple pixel-wise prediction tasks within a unified network simultaneously for visual scene understanding. However, cross-task feature interactions of current methods are still suffering from incomplete levels of representations, less discriminative semantics in feature participants, and inefficient pair-wise task interaction processes. To tackle these under-explored issues, we propose a novel BridgeNet framework, which extracts comprehensive and discriminative intermediate Bridge Features, and conducts interactions based on them. Specifically, a Task Pattern Propagation (TPP) module is first applied to ensure highly semantic task-specific feature participants are prepared for subsequent interactions, and a Bridge Feature Extractor (BFE) is specially designed to selectively integrate both high-level and low-level representations to generate the comprehensive bridge features. Then, instead of conducting heavy pair-wise cross-task interactions, a Task-Feature Refiner (TFR) is developed to efficiently take guidance from bridge features and form final task predictions. To the best of our knowledge, this is the first work considering the completeness and quality of feature participants in cross-task interactions. Extensive experiments are conducted on NYUD-v2, Cityscapes and PASCAL Context benchmarks, and the superior performance shows the proposed architecture is effective and powerful in promoting different dense prediction tasks simultaneously.
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Bridge genet:通过桥特征进行多任务密集预测的全面有效的特征交互
多任务密集预测旨在同时处理统一网络内的多个逐像素预测任务,以实现视觉场景理解。然而,当前的跨任务特征交互方法仍然存在表征层次不完整、特征参与者的判别语义不足以及成对任务交互过程效率低下等问题。为了解决这些未被探索的问题,我们提出了一个新的BridgeNet框架,该框架提取综合和判别的中间桥特征,并基于它们进行交互。具体来说,首先应用了一个任务模式传播(TPP)模块,以确保高度语义化的任务特定特征参与者为随后的交互做好准备,并专门设计了一个桥梁特征提取器(BFE),以选择性地集成高级和低级表示,以生成全面的桥梁特征。然后,不再进行大量的成对跨任务交互,而是开发了任务-特征精炼器(TFR),以有效地从桥梁特征中获取指导并形成最终的任务预测。据我们所知,这是第一个考虑跨任务交互中特征参与者的完整性和质量的工作。在NYUD-v2、cityscape和PASCAL Context基准上进行了大量的实验,优异的性能表明该架构在同时推进不同密度预测任务方面是有效和强大的。
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