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A survey of recent advances in CNN-based single image crowd counting and density estimation

机译:基于CNN的单图像人群计数和密度估计的最新进展调查

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Estimating count and density maps from crowd images has a wide range of applications such as video surveillance, traffic monitoring, public safety and urban planning. In addition, techniques developed for crowd counting can be applied to related tasks in other fields of study such as cell microscopy, vehicle counting and environmental survey. The task of crowd counting and density map estimation is riddled with many challenges such as occlusions, non-uniform density, intra-scene and inter-scene variations in scale and perspective. Nevertheless, over the last few years, crowd count analysis has evolved from earlier methods that are often limited to small variations in crowd density and scales to the current state-of-the-art methods that have developed the ability to perform successfully on a wide range of scenarios. The success of crowd counting methods in the recent years can be largely attributed to deep learning and publications of challenging datasets. In this paper, we provide a comprehensive survey of recent Convolutional Neural Network (CNN) based approaches that have demonstrated significant improvements over earlier methods that rely largely on hand-crafted representations. First, we briefly review the pioneering methods that use hand-crafted representations and then we delve in detail into the deep learning-based approaches and recently published datasets. Furthermore, we discuss the merits and drawbacks of existing CNN-based approaches and identify promising avenues of research in this rapidly evolving field. (C) 2017 Elsevier B.V. All rights reserved.
机译:根据人群图像估计计数和密度图具有广泛的应用,例如视频监视,交通监控,公共安全和城市规划。此外,为人群计数而开发的技术可以应用于其他研究领域的相关任务,例如细胞显微镜,车辆计数和环境调查。人群计数和密度图估计的任务充满了许多挑战,例如遮挡,密度不均匀,场景内和场景间的比例和视角变化。然而,在过去几年中,人群计数分析已从早期的方法(通常仅限于人群密度和规模的微小变化)发展到目前的最新方法,这些方法已开发出能够在广泛范围内成功执行的功能场景范围。近年来,人群计数方法的成功很大程度上可以归因于深度学习和具有挑战性的数据集的发布。在本文中,我们对最近基于卷积神经网络(CNN)的方法进行了全面的调查,这些方法已证明相对于主要依赖手工表示的早期方法有显着改进。首先,我们简要回顾使用手工表示形式的开拓性方法,然后详细研究基于深度学习的方法和最近发布的数据集。此外,我们讨论了现有基于CNN的方法的优缺点,并确定了在这个快速发展的领域中有希望的研究途径。 (C)2017 Elsevier B.V.保留所有权利。

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