论文标题
HDNET:用于人群计数的分层分离网络
HDNet: A Hierarchically Decoupled Network for Crowd Counting
论文作者
论文摘要
最近,由于其在密度分布上的出色拟合能力,基于密度图回归的方法已在人群中占主导地位。但是,进一步的改进趋于饱和,主要是由于背景噪声和较大的密度变化。在本文中,我们提出了一个层次分离的网络(HDNET),以在统一框架内解决上述两个问题。具体而言,背景分类子任务是从密度图预测任务分解的,然后将其分配给密度解耦模块(DDM)以利用其高度歧视能力。对于剩余的前景预测子任务,DDM在层次上进一步分层为多个密度特异性子任务,然后由基于回归的专家在前景密度估计模块(FDEM)中求解。尽管提出的策略有效地减少了假设空间,从而减轻了这些特定于任务专家的优化,但这些子任务的高相关性被忽略了。因此,我们引入了三种类型的交互策略,以统一整个框架,这些框架是特征交互,梯度交互和比例相互作用。 HDNet与上述精神融为一体,在几种流行的计数基准上实现了最先进的性能。
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.