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Rich Convolutional Features Fusion for Crowd Counting

机译:丰富的卷积特征融合用于人群计数

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摘要

Crowd counting remains a challenging vision task due to the presence of several problems such as severe occlusions, perspective distortions and scale variations in the target scene. How to design an accurate and robust crowd counting estimator has attracted intensive research interest in the past few decades. It is well-known that learning rich features representation is crucial for crowd counting. However, the existing neural-networks-based methods only employ CNN features extracted from the last convolutional layer, and the useful hierarchical information contained in the CNN features is overlooked. To address this problem, we propose a CNN architecture based on the fully convolutional network, which is used to build an end-to-end density map estimation system by combining some of the meaningful convolutional features. Such a combination is exploited to effectively capture both the multi-scale and the multi-level information in complex scenes. Extensive experiments on most existing crowd counting dataset- s including ShanghaiTech Part A, ShanghaiTech Part B and UCF CC 50 demonstrate the effectiveness and the reliability of our approach.
机译:由于存在多个问题,例如目标场景中的严重遮挡,透视变形和比例变化,因此人群计数仍然是具有挑战性的视觉任务。在过去的几十年中,如何设计一种准确而强大的人群计数估算器引起了广泛的研究兴趣。众所周知,学习丰富的特征表示对于人群计数至关重要。然而,现有的基于神经网络的方法仅采用从最后一个卷积层提取的CNN特征,而包含在CNN特征中的有用层次信息却被忽略了。为了解决这个问题,我们提出了一种基于全卷积网络的CNN架构,该架构用于通过结合一些有意义的卷积特征来构建端到端密度图估计系统。利用这种组合可以有效地捕获复杂场景中的多尺度和多层次信息。在大多数现有的人群计数数据集(包括ShanghaiTech A部分,ShanghaiTech B部分和UCF CC 50)上进行的广泛实验证明了我们方法的有效性和可靠性。

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