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Effect of Using Object Shape Prior on Visual Object Counting

机译:使用对象形状先验对可视对象计数的影响

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Visual object counting aims to count the number of objects in a given image or video. Among many object counting methods, the counting by density estimation method draws attention because of its capability of counting and its object localization ability. The method utilizes the object density map of the image with multiple objects. The density is estimated by a regression model which learns the mapping between the local features of the given image and the density map generated from its corresponding object locations. Unlike conventional methods that only rely on object locations for density map generation, in this paper, we show that the system performance can be increased by considering object shapes as well as object locations. To this end, we propose two approaches to generate the ground truth density map from the object locations. Both methods generate the density map which reflects structural features of the objects. We show that the regression models trained with density maps which reflect the object shape outperforms the models trained with density maps generated by the conventional density map generation method on several challenging benchmarks. In other words, we observe that it is essential to generate the ground truth density map according to object shape in the image.
机译:视觉对象计数旨在对给定图像或视频中的对象数量进行计数。在许多对象计数方法中,密度估计方法的计数由于其计数能力和对象定位能力而备受关注。该方法利用具有多个物体的图像的物体密度图。密度是通过回归模型估算的,该模型学习给定图像的局部特征与从其对应对象位置生成的密度图之间的映射。与仅依靠对象位置进行密度图生成的常规方法不同,在本文中,我们表明可以通过考虑对象形状和对象位置来提高系统性能。为此,我们提出了两种从目标位置生成地面真实密度图的方法。两种方法都生成反映对象结构特征的密度图。我们显示,使用密度图训练的反映对象形状的回归模型在一些具有挑战性的基准上,优于使用常规密度图生成方法生成的密度图训练的回归模型。换句话说,我们观察到根据图像中的物体形状生成地面真实密度图非常重要。

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