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Going Beyond the Regression Paradigm with Accurate Dot Prediction for Dense Crowds

机译:精确预测人群密集点,超越回归范式

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We present an alternative to the paradigm of density regression widely being employed for tackling crowd counting. In the prevalent regression approach, a model is trained for mapping images to its crowd density rather than counting by detecting every person. This framework is motivated from the difficulty to discriminate humans in highly dense crowds where unfavorable perspective, occlusion and clutter are prevalent. Though regression methods estimate overall crowd counts pretty well, localization of individual persons suffers and varies considerably across the entire density spectrum. Moreover, individual detection of people aids more explainable practical systems than predicting blind crowd count or density map. Hence, we move away from density regression and reformulate the task as localized dot prediction in dense crowds. Our dot detection model, DD-CNN, is trained for pixel-wise binary classification to detect people instead of regressing local crowd density. In order to handle severe scale variation and detect people of all scales with accurate dots, we use a novel multi-scale architecture which does not require any ground truth scale information. This training regime, which incorporates top-down feedback, helps our model to localize people in sparse as well as dense crowds. Our model delivers superior counting performance on major crowd datasets. We also evaluate on some additional metrics and evidence superior localization of the dot detection formulation.
机译:我们提出了密度回归范式的另一种选择,该范式广泛用于解决人群计数问题。在普遍的回归方法中,训练模型以将图像映射到其人群密度,而不是通过检测每个人进行计数。该框架的动机是难以区分高密度人群中的人,这些人群中不利于观察,遮挡和凌乱。尽管回归方法估计总体人群计数非常好,但每个人的位置在整个密度谱中都受到影响并且变化很大。此外,与预测盲目的人群数量或密度图相比,对人员进行个体检测可以提供更多可解释的实用系统。因此,我们不再使用密度回归,而是将任务重新制定为密集人群中的局部点预测。我们对点检测模型DD-CNN进行了像素级二进制分类训练,以检测人员而不是回归局部人群密度。为了处理严重的尺度变化并使用精确的点检测所有尺度的人,我们使用了一种新颖的多尺度体系结构,该体系不需要任何地面真实尺度信息。这种训练方法结合了自上而下的反馈,有助于我们的模型将稀疏人群和密集人群定位。我们的模型在主要人群数据集上提供了卓越的计数性能。我们还评估了一些其他指标,并证明了点检测配方的优越定位。

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