Recently, density map regression-based methods have dominated in crowd counting owing to their excellent fitting ability on density distribution. However, further improvement tends to saturate mainly because of the confusing background noise and the large density variation. In this paper, we propose a Hierarchically Decoupled Network (HDNet) to solve the above two problems within a unified framework. Specifically, a background classification sub-task is decomposed from the density map prediction task, which is then assigned to a Density Decoupling Module (DDM) to exploit its highly discriminative ability. For the remaining foreground prediction sub-task, it is further hierarchically decomposed to several density-specific sub-tasks by the DDM, which are then solved by the regression-based experts in a Foreground Density Estimation Module (FDEM). Although the proposed strategy effectively reduces the hypothesis space so as to relieve the optimization for those task-specific experts, the high correlation of these sub-tasks are ignored. Therefore, we introduce three types of interaction strategies to unify the whole framework, which are Feature Interaction, Gradient Interaction, and Scale Interaction. Integrated with the above spirits, HDNet achieves state-of-the-art performance on several popular counting benchmarks.
翻译:最近,密度地图回归法由于在密度分布上的能力非常合适,在人群计数方面占主导地位。然而,进一步的改进趋向饱和,主要原因是背景噪音混杂,密度差异很大。在本文件中,我们提议建立一个等级分解网络(HDNet),在一个统一的框架内解决上述两个问题。具体地说,背景分类子任务与密度地图预测任务脱钩任务脱钩任务脱钩,然后指定一个密度分错模块(DDM),以利用其高度的差别性能。对于其余的地表预测子任务,它进一步从等级上分解到DDDM的若干具体密度子任务,然后由在地表分错位模型(FDEM)中的基于回归的专家解决。尽管拟议的战略有效地减少了假设空间,从而减轻了这些具体任务专家的优化,但这些子任务之间的高度关联被忽略了。因此,我们引入了三种互动战略,以统一整个框架,即Faterimical exactoration、Gradicental exactivactorations、Basimations。