论文标题
jhu-crowd ++:大规模人群计数数据集和基准方法
JHU-CROWD++: Large-Scale Crowd Counting Dataset and A Benchmark Method
论文作者
论文摘要
由于其在现实世界中的应用多种多样,在近年来,基于图像的人群计数的任务引起了很多兴趣。最近,已经提出了几种方法来解决人群计数中遇到的各种问题。这些方法基本上是基于需要大量数据来训练网络参数的卷积神经网络。考虑到这一点,我们引入了一个新的大规模无约束的人群计数数据集(Jhu-Crowd ++),其中包含带有“ 151万”注释的“ 4,372”图像。与现有数据集相比,提出的数据集是在各种不同的情况和环境条件下收集的。具体而言,数据集包括几张具有基于天气的降解和照明变化的图像,使其成为一个非常具有挑战性的数据集。此外,数据集还包括图像级和头部级别的一系列注释。在此数据集上评估并比较了几种最新方法。数据集可以从http://www.crowd-counting.com下载。 此外,我们提出了一个新颖的人群计数网络,该网络通过剩余误差估计逐渐生成人群密度图。提出的方法将VGG16用作骨干网络,并采用最终层生成的密度图作为粗略的预测,以使用残留学习以渐进的方式来完善和生成更细的密度图。此外,剩余的学习是由基于不确定性的置信度加权机制指导的,该机制仅允许仅在改进路径中的高信任残差流动。在最近的复杂数据集上评估了拟议的置信度引导的深度剩余计数网络(CG-DRCN),并在错误方面取得了重大改善。
Due to its variety of applications in the real-world, the task of single image-based crowd counting has received a lot of interest in the recent years. Recently, several approaches have been proposed to address various problems encountered in crowd counting. These approaches are essentially based on convolutional neural networks that require large amounts of data to train the network parameters. Considering this, we introduce a new large scale unconstrained crowd counting dataset (JHU-CROWD++) that contains "4,372" images with "1.51 million" annotations. In comparison to existing datasets, the proposed dataset is collected under a variety of diverse scenarios and environmental conditions. Specifically, the dataset includes several images with weather-based degradations and illumination variations, making it a very challenging dataset. Additionally, the dataset consists of a rich set of annotations at both image-level and head-level. Several recent methods are evaluated and compared on this dataset. The dataset can be downloaded from http://www.crowd-counting.com . Furthermore, we propose a novel crowd counting network that progressively generates crowd density maps via residual error estimation. The proposed method uses VGG16 as the backbone network and employs density map generated by the final layer as a coarse prediction to refine and generate finer density maps in a progressive fashion using residual learning. Additionally, the residual learning is guided by an uncertainty-based confidence weighting mechanism that permits the flow of only high-confidence residuals in the refinement path. The proposed Confidence Guided Deep Residual Counting Network (CG-DRCN) is evaluated on recent complex datasets, and it achieves significant improvements in errors.