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Divide and Grow: Capturing Huge Diversity in Crowd Images with Incrementally Growing CNN

机译:分而成长:随着CNN的不断增长,捕捉人群图像中的巨大多样性

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Automated counting of people in crowd images is a challenging task. The major difficulty stems from the large diversity in the way people appear in crowds. In fact, features available for crowd discrimination largely depend on the crowd density to the extent that people are only seen as blobs in a highly dense scene. We tackle this problem with a growing CNN which can progressively increase its capacity to account for the wide variability seen in crowd scenes. Our model starts from a base CNN density regressor, which is trained in equivalence on all types of crowd images. In order to adapt with the huge diversity, we create two child regressors which are exact copies of the base CNN. A differential training procedure divides the dataset into two clusters and fine-tunes the child networks on their respective specialties. Consequently, without any hand-crafted criteria for forming specialties, the child regressors become experts on certain types of crowds. The child networks are again split recursively, creating two experts at every division. This hierarchical training leads to a CNN tree, where the child regressors are more fine experts than any of their parents. The leaf nodes are taken as the final experts and a classifier network is then trained to predict the correct specialty for a given test image patch. The proposed model achieves higher count accuracy on major crowd datasets. Further, we analyse the characteristics of specialties mined automatically by our method.
机译:自动计算人群图像中的人数是一项艰巨的任务。主要的困难源于人们在人群中出现方式的多样性。实际上,可用于人群区分的功能在很大程度上取决于人群的密度,以至于在高密度场景中仅将人视为斑点。我们通过不断增长的CNN来解决此问题,该CNN可以逐步提高其处理人群场景中广泛变异性的能力。我们的模型从基本的CNN密度回归器开始,对所有类型的人群图像进行等效训练。为了适应巨大的多样性,我们创建了两个子回归器,它们是基本CNN的精确副本。差分训练过程将数据集分为两个簇,并根据其各自的特点微调子网络。因此,在没有任何手工形成特殊专业的标准的情况下,儿童回归者成为某些人群的专家。子网络再次递归拆分,在每个部门创建两名专家。这种分级训练会产生一棵CNN树,其中子级回归者比其任何父项都是更出色的专家。叶子节点被视为最终专家,然后训练分类器网络以预测给定测试图像补丁的正确特性。提出的模型在主要人群数据集上实现了更高的计数准确性。此外,我们分析了通过我们的方法自动开采的特色菜的特征。

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