Existing domain adaptation methods for crowd counting view each crowd image as a whole and reduce domain discrepancies on crowds and backgrounds simultaneously. However, we argue that these methods are suboptimal, as crowds and backgrounds have quite different characteristics and backgrounds may vary dramatically in different crowd scenes (see Fig.~\ref{teaser}). This makes crowds not well aligned across domains together with backgrounds in a holistic manner. To this end, we propose to untangle crowds and backgrounds from crowd images and design fine-grained domain adaption methods for crowd counting. Different from other tasks which possess region-based fine-grained annotations (e.g., segments or bounding boxes), crowd counting only annotates one point on each human head, which impedes the implementation of fine-grained adaptation methods. To tackle this issue, we propose a novel and effective schema to learn crowd segmentation from point-level crowd counting annotations in the context of Multiple Instance Learning. We further leverage the derived segments to propose a crowd-aware fine-grained domain adaptation framework for crowd counting, which consists of two novel adaptation modules, i.e., Crowd Region Transfer (CRT) and Crowd Density Alignment (CDA). Specifically, the CRT module is designed to guide crowd features transfer across domains beyond background distractions, and the CDA module dedicates to constraining the target-domain crowd density distributions. Extensive experiments on multiple cross-domain settings (i.e., Synthetic $\rightarrow$ Real, Fixed $\rightarrow$ Fickle, Normal $\rightarrow$ BadWeather) demonstrate the superiority of the proposed method compared with state-of-the-art methods.
翻译:然而,我们争辩说,这些方法不尽人意,因为人群和背景的特性和背景在不同人群场景中可能差异很大(见Fig. ⁇ ref{teaser})。这样,人群与背景在不同的人群场景中并不完全吻合。为此,我们提议从人群图像中解开人群和背景,并设计精细区分的人群计时域。不同于拥有基于区域精细度的批注(如区块或捆绑框)的其他任务,因为人群和背景具有完全不同的特点和背景,在不同人群场景中可能差异很大(见Fig. ⁇ ref{teaser})。为了解决这一问题,我们建议采用新颖和有效的系统模型,从点级人群计时图中学习人群分解。我们进一步利用衍生的区块来提出一个基于基于基于区域精度精度精度精度精度的批量度调度(如区段、区块或捆绑定框)、由两个新的精度缩度缩度模块组成的群度调整框架(即硬度、硬度方向向硬度方向的硬度、硬度方向向方向方向方向的缩缩缩缩缩缩缩缩缩图示)。